3,042 results on '"A. Alhammadi"'
Search Results
2. Computer Vision in Smart Parking Solution Systems: Enhancing Urban Mobility
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Abraham, Anuj, Prasad, Shitala, Kashyap Pargi, Mohan, Alhammadi, Ahmed, Vyas, Pranjal, Kacprzyk, Janusz, Series Editor, Prentkovskis, Olegas, Series Editor, Abraham, Anuj, editor, Prasad, Shitala, editor, Alhammadi, Ahmed, editor, Lestable, Thierry, editor, and Chaabane, Ferdaous, editor more...
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- 2025
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3. LLM-Powered UAV Automations for City-Wide Operations
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Alhammadi, Ahmed, Abraham, Anuj, Zhao, Qiyang, Kacprzyk, Janusz, Series Editor, Prentkovskis, Olegas, Series Editor, Abraham, Anuj, editor, Prasad, Shitala, editor, Alhammadi, Ahmed, editor, Lestable, Thierry, editor, and Chaabane, Ferdaous, editor more...
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- 2025
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4. SlipNet: Enhancing Slip Cost Mapping for Autonomous Navigation on Heterogeneous and Deformable Terrains
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Yakubu, Mubarak, Zweiri, Yahya, Abubakar, Ahmad, Azzam, Rana, Alhammadi, Ruqayya, and Seneviratne, Lakmal
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Computer Science - Robotics - Abstract
Autonomous space rovers face significant challenges when navigating deformable and heterogeneous terrains due to variability in soil properties, which can lead to severe wheel slip, compromising navigation efficiency and increasing the risk of entrapment. To address this problem, we introduce SlipNet, a novel approach for predicting wheel slip in segmented regions of diverse terrain surfaces without relying on prior terrain classification. SlipNet employs dynamic terrain segmentation and slip assignment techniques on previously unseen data, enhancing rover navigation capabilities in uncertain environments. We developed a synthetic data generation framework using the high-fidelity Vortex Studio simulator to create realistic datasets that replicate a wide range of deformable terrain conditions for training and evaluation. Extensive simulation results demonstrate that our model, combining DeepLab v3+ with SlipNet, significantly outperforms the state-of-the-art TerrainNet method, achieving lower mean absolute error (MAE) across five distinct terrain samples. These findings highlight the effectiveness of SlipNet in improving rover navigation in challenging terrains. more...
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- 2024
5. Ionospheric Scintillation Forecasting Using Machine Learning
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Halawa, Sultan, Alansaari, Maryam, Sharif, Maryam, Alhammadi, Amel, and Fernini, Ilias
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Electrical Engineering and Systems Science - Signal Processing ,Computer Science - Machine Learning ,Statistics - Machine Learning - Abstract
This study explores the use of historical data from Global Navigation Satellite System (GNSS) scintillation monitoring receivers to predict the severity of amplitude scintillation, a phenomenon where electron density irregularities in the ionosphere cause fluctuations in GNSS signal power. These fluctuations can be measured using the S4 index, but real-time data is not always available. The research focuses on developing a machine learning (ML) model that can forecast the intensity of amplitude scintillation, categorizing it into low, medium, or high severity levels based on various time and space-related factors. Among six different ML models tested, the XGBoost model emerged as the most effective, demonstrating a remarkable 77% prediction accuracy when trained with a balanced dataset. This work underscores the effectiveness of machine learning in enhancing the reliability and performance of GNSS signals and navigation systems by accurately predicting amplitude scintillation severity. more...
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- 2024
6. Pot Shell Demolition Facility Reliability Improvement for EGA Smelter
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Al Dhanhani, Mohamed, Kunnathurampalayam Palanisamy, Balakrishnan, Dubey, Amit Kumar Shriramesh, Sudabattula, Syam Kumar, Alhammadi, Hashim, Sankaranarayanan, Velmurugan, Abdulrauf, Mohammad Shahid, Karunakkal, Vishnu Sankar, Basavanagowda, Basavaraj, Seikh, Sikander, and Edwards, Les, editor more...
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- 2025
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7. Toward Scalable Security: Intrusion Detection with Spark-Based Classifiers on Hadoop YARN
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Alhammadi, Omar, Elnagar, Ashraf, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Swaroop, Abhishek, editor, Kansal, Vineet, editor, Fortino, Giancarlo, editor, and Hassanien, Aboul Ella, editor more...
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- 2025
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8. An IoT-Based Mobile Air Pollution Monitoring System
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Alqasimi, Abdulaziz, Al Marzouqi, Khalid, Alhammadi, Abdulla, Aljasmi, Amer, Alnabulsi, Ahmad, Al-Ali, A. R., Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Tan, Kay Chen, Series Editor, Bradford, Phillip G., editor, Gadsden, S. Andrew, editor, Koul, Shiban K., editor, and Ghatak, Kamakhya Prasad, editor more...
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- 2025
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9. A Quantization-based Technique for Privacy Preserving Distributed Learning
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Colombo, Maurizio, Asal, Rasool, Damiani, Ernesto, AlQassem, Lamees Mahmoud, Almemari, Al Anoud, and Alhammadi, Yousof
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Computer Science - Cryptography and Security ,Computer Science - Artificial Intelligence - Abstract
The massive deployment of Machine Learning (ML) models raises serious concerns about data protection. Privacy-enhancing technologies (PETs) offer a promising first step, but hard challenges persist in achieving confidentiality and differential privacy in distributed learning. In this paper, we describe a novel, regulation-compliant data protection technique for the distributed training of ML models, applicable throughout the ML life cycle regardless of the underlying ML architecture. Designed from the data owner's perspective, our method protects both training data and ML model parameters by employing a protocol based on a quantized multi-hash data representation Hash-Comb combined with randomization. The hyper-parameters of our scheme can be shared using standard Secure Multi-Party computation protocols. Our experimental results demonstrate the robustness and accuracy-preserving properties of our approach. more...
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- 2024
10. Beyond Visual Appearances: Privacy-sensitive Objects Identification via Hybrid Graph Reasoning
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Jiang, Zhuohang, Tong, Bingkui, Du, Xia, Alhammadi, Ahmed, and Zhou, Jizhe
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Artificial Intelligence - Abstract
The Privacy-sensitive Object Identification (POI) task allocates bounding boxes for privacy-sensitive objects in a scene. The key to POI is settling an object's privacy class (privacy-sensitive or non-privacy-sensitive). In contrast to conventional object classes which are determined by the visual appearance of an object, one object's privacy class is derived from the scene contexts and is subject to various implicit factors beyond its visual appearance. That is, visually similar objects may be totally opposite in their privacy classes. To explicitly derive the objects' privacy class from the scene contexts, in this paper, we interpret the POI task as a visual reasoning task aimed at the privacy of each object in the scene. Following this interpretation, we propose the PrivacyGuard framework for POI. PrivacyGuard contains three stages. i) Structuring: an unstructured image is first converted into a structured, heterogeneous scene graph that embeds rich scene contexts. ii) Data Augmentation: a contextual perturbation oversampling strategy is proposed to create slightly perturbed privacy-sensitive objects in a scene graph, thereby balancing the skewed distribution of privacy classes. iii) Hybrid Graph Generation & Reasoning: the balanced, heterogeneous scene graph is then transformed into a hybrid graph by endowing it with extra "node-node" and "edge-edge" homogeneous paths. These homogeneous paths allow direct message passing between nodes or edges, thereby accelerating reasoning and facilitating the capturing of subtle context changes. Based on this hybrid graph... **For the full abstract, see the original paper.**, Comment: 15 pages more...
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- 2024
11. Robust Beamforming with Gradient-based Liquid Neural Network
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Wang, Xinquan, Zhu, Fenghao, Huang, Chongwen, Alhammadi, Ahmed, Bader, Faouzi, Zhang, Zhaoyang, Yuen, Chau, and Debbah, Merouane
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Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Millimeter-wave (mmWave) multiple-input multiple-output (MIMO) communication with the advanced beamforming technologies is a key enabler to meet the growing demands of future mobile communication. However, the dynamic nature of cellular channels in large-scale urban mmWave MIMO communication scenarios brings substantial challenges, particularly in terms of complexity and robustness. To address these issues, we propose a robust gradient-based liquid neural network (GLNN) framework that utilizes ordinary differential equation-based liquid neurons to solve the beamforming problem. Specifically, our proposed GLNN framework takes gradients of the optimization objective function as inputs to extract the high-order channel feature information, and then introduces a residual connection to mitigate the training burden. Furthermore, we use the manifold learning technique to compress the search space of the beamforming problem. These designs enable the GLNN to effectively maintain low complexity while ensuring strong robustness to noisy and highly dynamic channels. Extensive simulation results demonstrate that the GLNN can achieve 4.15% higher spectral efficiency than that of typical iterative algorithms, and reduce the time consumption to only 1.61% that of conventional methods., Comment: Accepted by IEEE Wireless Communications Letters more...
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- 2024
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12. Beamforming Inferring by Conditional WGAN-GP for Holographic Antenna Arrays
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Zhu, Fenghao, Wang, Xinquan, Huang, Chongwen, Alhammadi, Ahmed, Chen, Hui, Zhang, Zhaoyang, Yuen, Chau, and Debbah, Mérouane
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Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
The beamforming technology with large holographic antenna arrays is one of the key enablers for the next generation of wireless systems, which can significantly improve the spectral efficiency. However, the deployment of large antenna arrays implies high algorithm complexity and resource overhead at both receiver and transmitter ends. To address this issue, advanced technologies such as artificial intelligence have been developed to reduce beamforming overhead. Intuitively, if we can implement the near-optimal beamforming only using a tiny subset of the all channel information, the overhead for channel estimation and beamforming would be reduced significantly compared with the traditional beamforming methods that usually need full channel information and the inversion of large dimensional matrix. In light of this idea, we propose a novel scheme that utilizes Wasserstein generative adversarial network with gradient penalty to infer the full beamforming matrices based on very little of channel information. Simulation results confirm that it can accomplish comparable performance with the weighted minimum mean-square error algorithm, while reducing the overhead by over 50%. more...
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- 2024
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13. Robust Continuous-Time Beam Tracking with Liquid Neural Network
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Zhu, Fenghao, Wang, Xinquan, Huang, Chongwen, Jin, Richeng, Yang, Qianqian, Alhammadi, Ahmed, Zhang, Zhaoyang, Yuen, Chau, and Debbah, Mérouane
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Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Millimeter-wave (mmWave) technology is increasingly recognized as a pivotal technology of the sixth-generation communication networks due to the large amounts of available spectrum at high frequencies. However, the huge overhead associated with beam training imposes a significant challenge in mmWave communications, particularly in urban environments with high background noise. To reduce this high overhead, we propose a novel solution for robust continuous-time beam tracking with liquid neural network, which dynamically adjust the narrow mmWave beams to ensure real-time beam alignment with mobile users. Through extensive simulations, we validate the effectiveness of our proposed method and demonstrate its superiority over existing state-of-the-art deep-learning-based approaches. Specifically, our scheme achieves at most 46.9% higher normalized spectral efficiency than the baselines when the user is moving at 5 m/s, demonstrating the potential of liquid neural networks to enhance mmWave mobile communication performance., Comment: 6 pages, 6 figures. Accepted by IEEE Global Communications Conference (GLOBECOM) 2024 more...
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- 2024
14. Leaf Classification for Sustainable Agriculture and In-Depth Species Analysis.
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Sara Mumtaz, Shabbab Algamdi, Haifa F. Alhasson, Dina Abdulaziz Alhammadi, Ahmad Jalal, and Hui Liu 0035
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- 2025
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15. Event-Based Slip Estimation Framework for Space Rovers Traversing Soft Terrains.
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Ruqayya Alhammadi, Yahya H. Zweiri, Ahmad Abubakar, Mubarak Yakubu, Laith Abuassi, and Lakmal D. Seneviratne
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- 2025
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16. A Novel Remote Sensing Recognition Using Modified GMM Segmentation and DenseNet.
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Muhammad Waqas Ahmed, Moneerah Alotaibi, Sultan Refa Alotaibi, Dina Abdulaziz Alhammadi, Asaad Algarni, Ahmad Jalal, and Jeongho Cho
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- 2025
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17. Design of Super Resolution and Fuzzy Deep Learning Architecture for the Classification of Land Cover and Landsliding Using Aerial Remote Sensing Data.
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Junaid Ali Khan, Muhammad Attique Khan, Mohammed Al-Khalidi, Dina Abdulaziz AlHammadi, Areej Alasiry, Mehrez Marzougui, Yudong Zhang 0001, and Faheem Khan
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- 2025
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18. The detection of toxic gases (CO, FN3, HI, N2, CH4, N2O, and O3) using a wearable Kapton–graphene biosensor for environmental and biomedical applications
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Ramezani Farani, Marzieh, Kim, Hanseung, Alhammadi, Munirah, and Huh, Yun Suk
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- 2024
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19. Phytochemical compounds for treating hyperuricemia associated with gout: a systematic review
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Chenchula, Santenna, Ghanta, Mohan Krishna, Alhammadi, Munirah, Mohammed, Arifullah, Anitha, Kuttiappan, Nuthalapati, Poojith, Raju, Ganji Seeta Rama, Huh, Yun Suk, and Bhaskar, LVKS
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- 2024
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20. SHAN: Object-Level Privacy Detection via Inference on Scene Heterogeneous Graph
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Jiang, Zhuohang, Tong, Bingkui, Du, Xia, Alhammadi, Ahmed, and Zhou, Jizhe
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Computer Science - Computer Vision and Pattern Recognition - Abstract
With the rise of social platforms, protecting privacy has become an important issue. Privacy object detection aims to accurately locate private objects in images. It is the foundation of safeguarding individuals' privacy rights and ensuring responsible data handling practices in the digital age. Since privacy of object is not shift-invariant, the essence of the privacy object detection task is inferring object privacy based on scene information. However, privacy object detection has long been studied as a subproblem of common object detection tasks. Therefore, existing methods suffer from serious deficiencies in accuracy, generalization, and interpretability. Moreover, creating large-scale privacy datasets is difficult due to legal constraints and existing privacy datasets lack label granularity. The granularity of existing privacy detection methods remains limited to the image level. To address the above two issues, we introduce two benchmark datasets for object-level privacy detection and propose SHAN, Scene Heterogeneous graph Attention Network, a model constructs a scene heterogeneous graph from an image and utilizes self-attention mechanisms for scene inference to obtain object privacy. Through experiments, we demonstrated that SHAN performs excellently in privacy object detection tasks, with all metrics surpassing those of the baseline model., Comment: I have already updated a new version, you can check it here: arXiv:2406.12736 more...
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- 2024
21. Physics-Informed LSTM-Based Delay Compensation Framework for Teleoperated UGVs
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Abubakar, Ahmad, Zweiri, Yahya, Haddad, AbdelGafoor, Yakubu, Mubarak, Alhammadi, Ruqayya, and Seneviratne, Lakmal
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Electrical Engineering and Systems Science - Systems and Control - Abstract
Bilateral teleoperation of low-speed Unmanned Ground Vehicles (UGVs) on soft terrains is crucial for applications like lunar exploration, offering effective control of terrain-induced longitudinal slippage. However, latency arising from transmission delays over a network presents a challenge in maintaining high-fidelity closed-loop integration, potentially hindering UGV controls and leading to poor command-tracking performance. To address this challenge, this paper proposes a novel predictor framework that employs a Physics-informed Long Short-Term Memory (PiLSTM) network for designing bilateral teleoperator controls that effectively compensate for large delays. Contrasting with conventional model-free predictor frameworks, which are limited by their linear nature in capturing nonlinear and temporal dynamic behaviors, our approach integrates the LSTM structure with physical constraints for enhanced performance and better generalization across varied scenarios. Specifically, four distinct predictors were employed in the framework: two compensate for forward delays, while the other two compensate for backward delays. Due to their effectiveness in learning from temporal data, the proposed PiLSTM framework demonstrates a 26.1\ improvement in delay compensation over the conventional model-free predictors for large delays in open-loop case studies. Subsequently, experiments were conducted to validate the efficacy of the framework in close-loop scenarios, particularly to compensate for the real-network delays experienced by teleoperated UGVs coupled with longitudinal slippage. The results confirm the proposed framework is effective in restoring the fidelity of the closed-loop integration. This improvement is showcased through improved performance and transparency, which leads to excellent command-tracking performance. more...
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- 2024
22. Robust Beamforming for RIS-aided Communications: Gradient-based Manifold Meta Learning
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Zhu, Fenghao, Wang, Xinquan, Huang, Chongwen, Yang, Zhaohui, Chen, Xiaoming, Alhammadi, Ahmed, Zhang, Zhaoyang, Yuen, Chau, and Debbah, Mérouane
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Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Reconfigurable intelligent surface (RIS) has become a promising technology to realize the programmable wireless environment via steering the incident signal in fully customizable ways. However, a major challenge in RIS-aided communication systems is the simultaneous design of the precoding matrix at the base station (BS) and the phase shifting matrix of the RIS elements. This is mainly attributed to the highly non-convex optimization space of variables at both the BS and the RIS, and the diversity of communication environments. Generally, traditional optimization methods for this problem suffer from the high complexity, while existing deep learning based methods are lack of robustness in various scenarios. To address these issues, we introduce a gradient-based manifold meta learning method (GMML), which works without pre-training and has strong robustness for RIS-aided communications. Specifically, the proposed method fuses meta learning and manifold learning to improve the overall spectral efficiency, and reduce the overhead of the high-dimensional signal process. Unlike traditional deep learning based methods which directly take channel state information as input, GMML feeds the gradients of the precoding matrix and phase shifting matrix into neural networks. Coherently, we design a differential regulator to constrain the phase shifting matrix of the RIS. Numerical results show that the proposed GMML can improve the spectral efficiency by up to 7.31\%, and speed up the convergence by 23 times faster compared to traditional approaches. Moreover, they also demonstrate remarkable robustness and adaptability in dynamic settings., Comment: 12 pages, 13 figures. Accepted by IEEE Transactions on Wireless Communications 2024 more...
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- 2024
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23. Envisioning the Future Role of 3D Wireless Networks in Preventing and Managing Disasters and Emergency Situations
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Alhammadi, Ahmed, Abraham, Anuj, Fakhreddine, Aymen, Tian, Yu, Du, Jun, and Bader, Faouzi
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Computer Science - Networking and Internet Architecture - Abstract
In an era marked by unprecedented climatic upheavals and evolving urban landscapes, the role of advanced communication networks in disaster prevention and management is becoming increasingly critical. This paper explores the transformative potential of 3D wireless networks, an innovative amalgamation of terrestrial, aerial, and satellite technologies, in enhancing disaster response mechanisms. We delve into a myriad of use cases, ranging from large facility evacuations to wildfire management, underscoring the versatility of these networks in ensuring timely communication, real-time situational awareness, and efficient resource allocation during crises. We also present an overview of cutting-edge prototypes, highlighting the practical feasibility and operational efficacy of 3D wireless networks in real-world scenarios. Simultaneously, we acknowledge the challenges posed by aspects such as cybersecurity, cross-border coordination, and physical layer technological hurdles, and propose future directions for research and development in this domain. more...
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- 2024
24. A Novel Approach to WaveNet Architecture for RF Signal Separation with Learnable Dilation and Data Augmentation
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Tian, Yu, Alhammadi, Ahmed, Quran, Abdullah, and Ali, Abubakar Sani
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Electrical Engineering and Systems Science - Signal Processing ,Computer Science - Machine Learning - Abstract
In this paper, we address the intricate issue of RF signal separation by presenting a novel adaptation of the WaveNet architecture that introduces learnable dilation parameters, significantly enhancing signal separation in dense RF spectrums. Our focused architectural refinements and innovative data augmentation strategies have markedly improved the model's ability to discern complex signal sources. This paper details our comprehensive methodology, including the refined model architecture, data preparation techniques, and the strategic training strategy that have been pivotal to our success. The efficacy of our approach is evidenced by the substantial improvements recorded: a 58.82\% increase in SINR at a BER of $10^{-3}$ for OFDM-QPSK with EMI Signal 1, surpassing traditional benchmarks. Notably, our model achieved first place in the challenge \cite{datadrivenrf2024}, demonstrating its superior performance and establishing a new standard for machine learning applications within the RF communications domain. more...
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- 2024
25. Multi-Sources Information Fusion Learning for Multi-Points NLOS Localization
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Wang, Bohao, Zhu, Fenghao, Liu, Mengbing, Huang, Chongwen, Yang, Qianqian, Alhammadi, Ahmed, Zhang, Zhaoyang, and Debbah, Mérouane
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Computer Science - Information Theory - Abstract
Accurate localization of mobile terminals is crucial for integrated sensing and communication systems. Existing fingerprint localization methods, which deduce coordinates from channel information in pre-defined rectangular areas, struggle with the heterogeneous fingerprint distribution inherent in non-line-of-sight (NLOS) scenarios. To address the problem, we introduce a novel multi-source information fusion learning framework referred to as the Autosync Multi-Domain NLOS Localization (AMDNLoc). Specifically, AMDNLoc employs a two-stage matched filter fused with a target tracking algorithm and iterative centroid-based clustering to automatically and irregularly segment NLOS regions, ensuring uniform fingerprint distribution within channel state information across frequency, power, and time-delay domains. Additionally, the framework utilizes a segment-specific linear classifier array, coupled with deep residual network-based feature extraction and fusion, to establish the correlation function between fingerprint features and coordinates within these regions. Simulation results demonstrate that AMDNLoc significantly enhances localization accuracy by over 40\% compared with traditional convolutional neural networks on the wireless artificial intelligence research dataset. more...
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- 2024
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26. Enhanced microstructure and electrical performance of a cost-effective Ni/Cu/n-GaN Schottky diode with a V2O5 interlayer for optoelectronic applications
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Aswini, Karri, Munirathnam, K., Manjunath, V., Reddy, N. Nanda Kumar, Alhammadi, Salh, Kumar, Koppala Siva, Golkonda, Srinivas Reddy, Minnam Reddy, Vasudeva Reddy, Kim, Woo Kyoung, Ranjith, R., Amina, Musarat, and Dastagiri, S. more...
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- 2025
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27. Prevalence of human papillomavirus infection and cervical abnormalities among women attending a tertiary care center in Saudi Arabia over 2 years
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Faqih, Layla, Alzamil, Lama, Aldawood, Esraa, Alharbi, Sarah, Muzzaffar, Moammer, Moqnas, Amani, Almajed, Heba, Alghamdi, Ahmed, Alotaibi, Mohammed, Alhammadi, Sultan, and Alwelaie, Yazeed
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- 2023
28. Plasmodium falciparum heat shock proteins as antimalarial drug targets: An update.
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Ahmad, Tanveer, Alhammadi, Bushra, Almaazmi, Shaikha, Arafa, Sahar, Blatch, Gregory, Dutta, Tanima, Gestwicki, Jason, Keyzers, Robert, Shonhai, Addmore, and Singh, Harpreet
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Antimalarial drugs ,Heat shock proteins ,Malaria ,Molecular chaperones ,Plasmodium falciparum ,Protein folding ,Humans ,Heat-Shock Proteins ,Plasmodium falciparum ,Antimalarials ,HSP70 Heat-Shock Proteins ,Malaria ,Protozoan Proteins - Abstract
Global efforts to eradicate malaria are threatened by multiple factors, particularly the emergence of antimalarial drug resistant strains of Plasmodium falciparum. Heat shock proteins (HSPs), particularly P. falciparum HSPs (PfHSPs), represent promising drug targets due to their essential roles in parasite survival and virulence across the various life cycle stages. Despite structural similarities between human and malarial HSPs posing challenges, there is substantial evidence for subtle differences that could be exploited for selective drug targeting. This review provides an update on the potential of targeting various PfHSP families (particularly PfHSP40, PfHSP70, and PfHSP90) and their interactions within PfHSP complexes as a strategy to develop new antimalarial drugs. In addition, the need for a deeper understanding of the role of HSP complexes at the host-parasite interface is highlighted, especially heterologous partnerships between human and malarial HSPs, as this opens novel opportunities for targeting protein-protein interactions crucial for malaria parasite survival and pathogenesis. more...
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- 2024
29. Altitudinal influence on survival mechanisms, nutritional composition, and antimicrobial activity of Moringa Peregrina in the summer climate of Fujairah, UAE
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François Mitterand Tsombou, Aishah Saeed Sulaiman Al Dhanhani, Ahmed Mohamed Saeed Ali Alhmoudi, Maryam Ali Saeed Mohamed Al Hmoudi, Fouad Lamghari Ridouane, Maitha Fahad Ahmed Alabdouli, Hessa Jassim Alhammadi, Mozah Ebraheim Abdulla Ali Alsamahi, and Shaher Bano Mirza more...
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Altitudinal effects ,Capacity of survival ,Nutritional value ,Antimicrobial activities ,Native plant ,Moringa Peregrina ,Medicine ,Science - Abstract
Abstract Extreme environments significantly impact the metabolic profiles of plants, leading to variations in chemical composition and bioactivity. This study investigates the effects of altitude, plant part age, and light exposure on the chemical composition and antimicrobial properties of Moringa peregrina. Based on our results, mineral contents were plant location dependent; while dry matter, ash, total digestible nutrients (TDN), fibre, protein, and tannins, were greater in the samples from the mountain. Vitamin E was more concentrated in the wadi. Vitamin A, selenium, phenols, and heavy metals were undetectable in both environments. Antimicrobial assays revealed stronger activity in mountain samples than the other locations. Age-dependent analyses showed that nitrogen, protein, ash, and electrolyte leakage were higher in young plant parts, whereas chlorophyll a and b levels were elevated in mature leaves and younger branches, particularly in lower elevations. Interestingly, young leaves from mountain regions had higher chlorophyll concentrations compared to mature leaves, contrasting with trends at other elevations. Photosynthetic photon flux density (PPFD) measurements were also highest in the mountain region. These findings suggest that M. peregrina employs diverse metabolic adaptations for survival in challenging environments, potentially offering socioeconomic value to indigenous communities through its bioactive properties. more...
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- 2025
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30. Unfolding insights about resilience and its coping strategies by medical academics and healthcare professionals at their workplaces: a thematic qualitative analysis
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Salman Yousuf Guraya, Jacqueline Maria Dias, Mohamed Ahmed Eladl, Ayah Mohammad Rajai Rustom, Fatima Audi Saleem Alalawi, Majid Hassan Saleh Alhammadi, Yusra Ahmed Mohammed Ahmed, Amna Ali Omran Taryam Al Shamsi, Sarah Juman Bilalaga, Alfred Nicholson, Hani Malik, and Shaista Salman Guraya more...
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Stressors ,Resilience ,Health care professionals ,Medical and health academics ,Work-life balance ,Special aspects of education ,LC8-6691 ,Medicine - Abstract
Abstract Background Health care professionals (HCPs) and medical and health academics (MHAs) strive to maintain and promote population health through evidence-based medical education and practice. At their workplaces, due to the demanding nature of work, HCPs and MHAs face substantial degrees of physiological, psychological, and physical stress, including burnout. Resilience has therefore become a fundamental necessity in the medical field. Our research aimed to acquire an in-depth comprehension of how HCPs and MHAs understand, cultivate, and sustain resilience when confronted with workplace challenges and stressors. Methods We reviewed the existing corpus of literature about resilience, stressors, and coping strategies and followed an iterative deliberations process to develop an interview guide. The guide was validated by content experts and was piloted on a small group of MHAs of the University of Sharjah (UoS) and HCPs from different hospitals of the United Arab Emirates to test its relevance, internal consistency, and inter-observer validity. The validated interview guide was then administered for in-person interviews. Lastly, we adopted the Braun and Clarke 6-stage thematic model for qualitative data analysis. Results Our study recorded insights of 170 participants; 69 MHAs and 101 HCPs. Through an inductive thematic analysis, three overarching themes with sub-themes emerged; cognitive mastery (cognitive appraisal and problem-solving abilities), affective well-being (gratification from professional efficacy and social support), and conative efficiency (proactive approaches and introspection and reflection). Other main findings highlighted stress-related factors, realistic expectations, personal well-being and work-life balance. MHAs were concerned about academic output and research, while HCPs were stressed about patient care, delivery of services, and workload. These factors highlighted a complex interaction between cognitive mastery, emotional well-being, and conative efficiency. Conclusion The findings of our study bestow valuable insights into the dynamic nature of resilience in the medical profession. The synergies and dissimilarities in work-life balance, personal productivity, and job-specific stressors among HCPs and MHAs demand a well-structured resilience program. The themes of cognitive mastery, affective well-being, and conative efficiency are interconnected and can help foster work-life balance and personal well-being of HCPs and MHAs to improve their resilience. more...
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- 2025
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31. Remote Sensing Surveillance Using Multilevel Feature Fusion and Deep Neural Network
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Laiba Zahoor, Haifa F. Alhasson, Mohammed Alnusayri, Mohammed Alatiyyah, Dina Abdulaziz Alhammadi, Ahmad Jalal, and Hui Liu
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Human action recognition ,object detectors ,aerial imaging ,body pose ,multilevel feature fusion ,image analysis ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Human action recognition from aerial imagery poses significant challenges due to the dynamic nature of the scenes and the complexity of human movements. In this paper, we present an enhanced system that combines YOLO for human detection with a complete multilevel feature fusion approach to improve recognition of human actions in drone-captured photos. Our system presents a reliable drone-based human action system through the integration of state-of-the-art methods for multilevel feature extraction and object detection. Initially, frames are extracted individually from drone footage sequences. Preprocessing techniques, which include Gaussian blur, grayscale conversion, and background removal, are used for every frame to improve image quality and feature reliability. For object detection, we effectively locate and recognize human subjects in these aerial frames using YOLO approach. Afterward, the framework extracts 14 body landmarks that represent the shape of the human body by keypoint extraction. Four significant features are employed to capture the complexity of human movement effectively: the incorporation of 3D point cloud data adds depth to the image and makes it feasible to construct a more detailed three-dimensional representation; measuring the angles between keypoints provides significant details on joint orientations which are essential for posture analysis; and geodesic distance measure the shortest paths along the surface of the body to provide useful insight into the spatial relationships between keypoints. The extracted features are optimized by using quadratic discriminant analysis. In the end, a deep neural network was trained to perform the action classification. Three benchmark datasets, the UAV Gesture, UAV Human, and UCF-ARG datasets, were used for our experiments and system testing. Our model achieved corresponding action recognition accuracy values of 90.15%, 72.37%, and 76.50% on each of these datasets. more...
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- 2025
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32. Three-dimensional quantitative temporomandibular joint changes in skeletal class I malocclusion treated with extraction and non-extraction protocols: a comparative study of fixed orthodontic appliances and clear aligners
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Majedh Abdo Ali Al-Somairi, Bowen Zheng, Xaiofeng Yang, Yongxin Zhang, Maged S. Alhammadi, Hao xu, Najah Alhashimi, Bushra Sufyan Almaqrami, Naseem Ali Al –Worafi, Enas Senan Alyafrusee, Barakat Al-Tayar, and Yi Liu more...
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Temporomandibular joint ,Cone beam computed tomography ,Fixed appliances ,Clear aligners ,Extraction ,Non-extraction ,Dentistry ,RK1-715 - Abstract
Abstract Objective This study aimed to evaluate the positional and morphological changes in the temporomandibular joint (TMJ) in adult patients with skeletal Class I malocclusion treated with fixed orthodontic appliances (FAs) and clear aligners (CAs), both with and without premolar extractions. Methods This retrospective study involved 120 adult patients divided into non-extraction and extraction groups, each further subdivided equally into those treated with FAs and CAs. Cone beam computed tomography (CBCT) was used to assess the TMJ measurements before (T0) and after treatment (T1). Statistical analyses were conducted to compare the mean changes in intra- and inter-groups. A significance level of p ≤ 0.05 was considered. Results In the non-extraction group, specifically in FAs, significant increases were observed in TMJ parameters; anteroposterior condylar position (APCP) and mediolateral condylar inclination (MCI). Conversely, significant decreases were noted in vertical condylar position (VCP) and vertical condylar inclination (VCI). In the extraction group, significant increases were noted in APCP and anterior joint space (AJS), while posterior joint space (PJS) and anteroposterior condylar joint position (APCJP) decreased. For inter-group comparisons, the extraction group showed significant increases in APCP in FAs compared to CAs, and a significant decrease in APCJP in FAs compared to CAs. Conclusion FAs significantly impact condylar positions and joint spaces, especially in extraction cases. Monitoring TMJ parameters during orthodontic treatment is crucial to ensure positive outcomes and prevent TMJ disorders (TMDs). These findings may guide the selection of orthodontic appliances based on individual malocclusion characteristics. more...
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- 2025
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33. Revisiting VR training in developmental disorders, is it a friend or foe? A scoping systematic review of randomized controlled trials
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AbdelMassih, Antoine Fakhry, AlHammadi, Waad I., AlHosani, Hind A., AlHosani, Sara, AlHammadi, Fatima, and AlShehhi, Shooq A.
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- 2024
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34. Fairness-Driven Optimization of RIS-Augmented 5G Networks for Seamless 3D UAV Connectivity Using DRL Algorithms
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Tian, Yu, Alhammadi, Ahmed, He, Jiguang, Fakhreddine, Aymen, and Bader, Faouzi
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Electrical Engineering and Systems Science - Signal Processing ,Computer Science - Artificial Intelligence ,Computer Science - Information Theory - Abstract
In this paper, we study the problem of joint active and passive beamforming for reconfigurable intelligent surface (RIS)-assisted massive multiple-input multiple-output systems towards the extension of the wireless cellular coverage in 3D, where multiple RISs, each equipped with an array of passive elements, are deployed to assist a base station (BS) to simultaneously serve multiple unmanned aerial vehicles (UAVs) in the same time-frequency resource of 5G wireless communications. With a focus on ensuring fairness among UAVs, our objective is to maximize the minimum signal-to-interference-plus-noise ratio (SINR) at UAVs by jointly optimizing the transmit beamforming parameters at the BS and phase shift parameters at RISs. We propose two novel algorithms to address this problem. The first algorithm aims to mitigate interference by calculating the BS beamforming matrix through matrix inverse operations once the phase shift parameters are determined. The second one is based on the principle that one RIS element only serves one UAV and the phase shift parameter of this RIS element is optimally designed to compensate the phase offset caused by the propagation and fading. To obtain the optimal parameters, we utilize one state-of-the-art reinforcement learning algorithm, deep deterministic policy gradient, to solve these two optimization problems. Simulation results are provided to illustrate the effectiveness of our proposed solution and some insightful remarks are observed. more...
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- 2023
35. Energy-efficient Beamforming for RISs-aided Communications: Gradient Based Meta Learning
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Wang, Xinquan, Zhu, Fenghao, Zhou, Qianyun, Yu, Qihao, Huang, Chongwen, Alhammadi, Ahmed, Zhang, Zhaoyang, Yuen, Chau, and Debbah, Mérouane
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Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Reconfigurable intelligent surfaces (RISs) have become a promising technology to meet the requirements of energy efficiency and scalability in future six-generation (6G) communications. However, a significant challenge in RISs-aided communications is the joint optimization of active and passive beamforming at base stations (BSs) and RISs respectively. Specifically, the main difficulty is attributed to the highly non-convex optimization space of beamforming matrices at both BSs and RISs, as well as the diversity and mobility of communication scenarios. To address this, we present a greenly gradient based meta learning beamforming (GMLB) approach. Unlike traditional deep learning based methods which take channel information directly as input, GMLB feeds the gradient of sum rate into neural networks. Coherently, we design a differential regulator to address the phase shift optimization of RISs. Moreover, we use the meta learning to iteratively optimize the beamforming matrices of BSs and RISs. These techniques make the proposed method to work well without requiring energy-consuming pre-training. Simulations show that GMLB could achieve higher sum rate than that of typical alternating optimization algorithms with the energy consumption by two orders of magnitude less., Comment: 5 pages, 8 figures. Accepted in IEEE ICC 2024 (GCSN symposium) more...
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- 2023
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36. Examining the interplay between managerial ties, dynamic capabilities and innovation climate in driving balanced and combined ambidextrous innovation
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Alhammadi, Bader, Khalid, Khalizani, Ahmad, Syed Zamberi, and Davidson, Ross
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- 2024
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37. Pre-training-free Image Manipulation Localization through Non-Mutually Exclusive Contrastive Learning
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Zhou, Jizhe, Ma, Xiaochen, Du, Xia, Alhammadi, Ahmed Y., and Feng, Wentao
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Deep Image Manipulation Localization (IML) models suffer from training data insufficiency and thus heavily rely on pre-training. We argue that contrastive learning is more suitable to tackle the data insufficiency problem for IML. Crafting mutually exclusive positives and negatives is the prerequisite for contrastive learning. However, when adopting contrastive learning in IML, we encounter three categories of image patches: tampered, authentic, and contour patches. Tampered and authentic patches are naturally mutually exclusive, but contour patches containing both tampered and authentic pixels are non-mutually exclusive to them. Simply abnegating these contour patches results in a drastic performance loss since contour patches are decisive to the learning outcomes. Hence, we propose the Non-mutually exclusive Contrastive Learning (NCL) framework to rescue conventional contrastive learning from the above dilemma. In NCL, to cope with the non-mutually exclusivity, we first establish a pivot structure with dual branches to constantly switch the role of contour patches between positives and negatives while training. Then, we devise a pivot-consistent loss to avoid spatial corruption caused by the role-switching process. In this manner, NCL both inherits the self-supervised merits to address the data insufficiency and retains a high manipulation localization accuracy. Extensive experiments verify that our NCL achieves state-of-the-art performance on all five benchmarks without any pre-training and is more robust on unseen real-life samples. The code is available at: https://github.com/Knightzjz/NCL-IML., Comment: Tech report. ICCV2023 paper more...
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- 2023
38. Advance Simulation Method for Wheel-Terrain Interactions of Space Rovers: A Case Study on the UAE Rashid Rover
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Abubakar, Ahmad, Alhammadi, Ruqqayya, Zweiri, Yahya, and Seneviratne, Lakmal
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Computer Science - Robotics ,Electrical Engineering and Systems Science - Systems and Control - Abstract
A thorough analysis of wheel-terrain interaction is critical to ensure the safe and efficient operation of space rovers on extraterrestrial surfaces like the Moon or Mars. This paper presents an approach for developing and experimentally validating a virtual wheel-terrain interaction model for the UAE Rashid rover. The model aims to improve the fidelity and capability of current simulation methods for space rovers and facilitate the design, evaluation, and control of their locomotion systems. The proposed method considers various factors, such as wheel grouser properties, wheel slippage, loose soil properties, and interaction mechanics. The model accuracy was validated through experiments on a Test-rig testbed that simulated lunar soil conditions. In specific, a set of experiments was carried out to test the behaviors acted on a Grouser-Rashid rover wheel by the lunar soil with different slip ratios of 0, 0.25, 0.50, and 0.75. The obtained results demonstrate that the proposed simulation method provides a more accurate and realistic simulation of the wheel-terrain interaction behavior and provides insight into the overall performance of the rover, Comment: Submitted to ICAR2023 conference more...
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- 2023
39. Computer-Aided Diagnosis of Acute Lymphoblastic Leukemiaby Using a Novel CAE-CNN Framework
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Mohammed Mansoor Alhammadi
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acute lymphoblastic leukemia, convolutional autoencoder, convolutional neural network, feature extraction, computer-aided diagnosis ,Technology - Abstract
Acute lymphoblastic leukemia (ALL) is a main health problem throughout the world. Therefore, fast and exact diagnosis is the most crucial factor for providing efficient management and treatment methods. The conventional diagnostic tools, based on the morphological and cytochemical investigation of blood and bone smears, are usually not specific and laborious. Thus, they often result in diagnostic errors and delay in treatment initiation. In this paper, ALL-diagnosing methods based on the convolutional autoencoder (CAE) was proposed to reduce the amount of data, and then convolutional neural network (CNN) was applied to identify ALL. The design method employed deep neural networks to recognize the features of the cells in question and then distinguish them as either leukemic or healthy cell types. The proposed laboratory method, with the use of the curated datasets of annotated pathological images of normal lymphoid progenitor cells, aimed to tackle the challenges related to the lack of curated datasets with annotated images of these cells. These challenges are believed to be linked to imprecise and time-consuming leukemia diagnosis and cure process. The simulated results confirmed the efficiency of the suggested technique, where CAE showed a correlation coefficient of 0.987 for lymphoblastic cells and CNN had an accuracy rate of 99.92% in ALL diagnosis. Such data demonstrated the capability of deep-based methodologies to fight leukemia. more...
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- 2024
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40. Risk of sarcopenia, frailty and malnutrition as predictors of postoperative delirium in surgery
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Henriette Louise Moellmann, Eman Alhammadi, Soufian Boulghoudan, Julian Kuhlmann, Anica Mevissen, Philipp Olbrich, Louisa Rahm, and Helmut Frohnhofen
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POD ,Surgery ,Malnutrition ,Geriatric assessment ,Geriatrics ,RC952-954.6 - Abstract
Abstract Background The risk factors for postoperative delirium are numerous and complex. One approach to identifying patients at risk is to evaluate their nutritional status. The aim of this prospective study is to better understand nutrition as a potential risk factor for postoperative delirium. Methods A comprehensive preoperative assessment (Clinical Frailty Scale (CFS), the SARC-F questionnaire, Mini Nutritional Assessment-Short Form (MNA-SF)) were carried out as a prospective clinical study on 421 patients (70+) from 4 different surgical disciplines. Postoperatively, patients are examined daily for the presence of delirium using the 4AT screening tool (Arousal, Attention, Abbreviated Mental Test − 4, Acute change), the Nursing Delirium Screening Scale (NuDesc) and the Confusion Assessment Method (CAM) with its adaptation for the intensive care unit (CAM-ICU). Results If there were indications of frailty or sarcopenia in the CFS or SARC-F, the association with delirium was increased 5.34-fold (OR of 5.34 [95% CI: 2.57;11.1]) and 5.56-fold (OR of 5.56 [95% CI: 2.97;10.4]) respectively. Delirium also occurred significantly more frequently with the risk of malnutrition or manifest malnutrition (MNA-SF) than with a normal nutritional status. Conclusions Patients’ preoperative and nutritional status significantly impact the risk of developing postoperative delirium. Factors such as frailty, sarcopenia and possible malnutrition must be considered when implementing an effective and targeted preoperative assessment. Trail registration German Clinical Trials Registry at https://www.drks.de/DRKS00028614 , Registered 25 March 2022. more...
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- 2024
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41. Comprehensive geriatric assessment for predicting postoperative delirium in oral and maxillofacial surgery: a prospective cohort study
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Eman Alhammadi, Julian Max Kuhlmann, Majeed Rana, Helmut Frohnhofen, Henriette Louise Moellmann, and Nonauthor Collaborator (Data Collection)
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Postoperative delirium ,Maxillofacial surgery ,Geriatric assessment ,Clock drawing test ,Prospective ,Medicine ,Science - Abstract
Abstract Identifying high-risk patients for developing postoperative delirium (POD) is essential for optimizing the medical field’s human and financial resources through specialty-relevant geriatric assessments that can aid in establishing prehabilitation strategies. This study aims to identify geriatric screening tools to predict preoperative delirium and explore the high-risk elderly patients undergoing oral maxillofacial surgery. A comprehensive geriatric assessment encompassing 23 instruments was used to evaluate inpatients undergoing surgery under general anaesthesia, preoperatively and postoperatively. Selective intraoperative and postoperative variables were also assessed for their relation to POD occurrence. This prospective study included 90 patients (mean age 79.0 years) from August 2022 to August 2023. The POD rate in this cohort was (8.9% n = 8). The Clock-Drawing Test (CDT) was significantly associated with POD occurrence (p = 0.005). Significant associations were found between POD occurrence and operation type (p = 0.018), duration (p = 0.026), length of stay ( p = 0.002), and postoperative hemoglobin levels (p = 0.027). This study highlights the importance of comprehensive geriatric assessments in predicting POD in elderly patients. Future research should build on these findings to enhance preoperative care strategies and improve outcomes. Trial registration: German Register of Clinical Studies, DRKSID DRKS00028614. more...
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- 2024
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42. Cardiac amyloidosis: A diagnostic challenge
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Eman S. AL_Akhali, Sultan A. Alshoabi, Abdullgabbar M. Hamid, Kamal D. Alsultan, Awatif M. Omer, and Mohammed A. Alhammadi
- Subjects
Cardiac amyloidosis ,Transthyretin amyloid cardiomyopathy (ATTR-CM) ,Cardiac magnetic resonance (CMR) ,Late gadolinium enhancement (LGE) ,Postcontrast invert T1 scout images Abnormal nulling pattern (ANP) ,Medical physics. Medical radiology. Nuclear medicine ,R895-920 - Abstract
Cardiac amyloidosis is indeed a condition characterized by the deposition of amyloid proteins in the myocardium, leading to thickening and stiffening of the heart muscle. These abnormal protein deposits can interfere with the heart's normal functioning and may pose diagnostic challenges due to its varied clinical presentation and resemblance to other heart condition. Here, we present a case of 55-year-old female patient of uncontrolled hypertensions for 15 years. About 15 years ago, she presented with chest pain and was diagnosed with cardiomyopathy (CM) characterized by low left ventricle (LV) function of unknown cause. Despite being on antihypertensive treatment, the patient continued to experience chest heaviness with persistent elevate blood pressure. An echocardiogram revealed increased LV septal wall thickness, valvular thickening, and biatrial dilation. Subsequently, cardiac magnetic resonance imaging (CMR) was performed, which revealed left atrium enlargement and asymmetrical myocardial wall thickening, particularly at the septum. White blood axial image revealed thickened inter atrial septum, while late gadolinium enhancement (LGE) magnetic resonance (LGE MR) images showed patchy LGE at the base relative to the apex of the myocardium, highlighting the base-to-apex gradient, subendocardial pattern enhancement at apical lateral wall, and transmural pattern enhancement of the mid anteroseptal and inferoseptal wall. Additionally, a short axis time to invert T1 scout image of left ventricle displayed an abnormal nulling pattern initially in the myocardium, followed by the blood pool, and finally the spleen. These findings collectively led to the diagnosis of cardiac amyloidosis. more...
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- 2024
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43. Assessing the Efficiency of Teacher Education Program in Emirati University for Preparing Pre-Service Teachers for Inclusive Education
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Muna Mohamed Alhammadi
- Abstract
This study investigates Emirati universities' general education program effectiveness in preparing pre-service teachers for inclusive education. It assesses pre-service teachers' readiness to teach students with special educational needs and disabilities (SEND) after studying two academic subjects in inclusive education and undertaking three practicums. Pre-service teachers' beliefs, knowledge, and experiences in applying inclusion were explored. Mixed quantitative and qualitative research methods were used to conduct this study. Data for the study were gathered through an online survey, which was developed by the author after gaining feedback from four experts in the field. To validate the results of the survey, semi-structured interviews were conducted with some research participants who completed the survey. The study involved 53 female pre-service teachers specializing in early childhood education, predominantly in their fourth year or internship, all having completed two inclusive education courses. Recruitment was conducted through WhatsApp internship groups and email. The study was conducted at a federal university in the UAE with two campuses. This university was selected because of its strong commitment to inclusive practices for students compared to other universities in the UAE. The results show a positive impact on beliefs but dissatisfaction with inclusion knowledge. The program lacked real classroom-inclusive training, affecting readiness. Based on the findings, we recommend four-year education with diverse inclusive topics and ample teaching practice to improve pre-service teacher preparation. more...
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- 2024
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44. The Impact of the Madrasati Platform Experience on Acquiring Mathematical Concepts and Improving Learning Motivation from the Point of View of Mathematics Teachers'
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Mansour Saleh Alabdulaziz and Ali Abdullah Alhammadi
- Abstract
The objective of this research is to examine the impact of the Madrasati platform experience on acquiring mathematical concepts, and improving learning motivation from the point of view of mathematics teachers. To achieve the objective of the research, the researchers relied on the descriptive approach in its survey style. The sample of the study consisted of 613 mathematics teachers in the Kingdom of Saudi Arabia, and the study tool (questionnaire) was distributed to them. These data were processed through the use of quantitative methods and measures, such as the statistical packages program SPSS. The main results were as follows. First, there was a moderate level of agreement among participants regarding the impact of the experience of using the Madrasati platform. Second, there was a much stronger level of agreement regarding the degree to which using the Madrasati platform enabled students to acquire mathematical concepts. Third, there was almost universal agreement among participants that using the platform enhanced students' motivation to learn. Fourthly, the participants perceived there to be an extremely strong relationship between enhanced motivation to learn and the acquisition of mathematical concepts. The researchers recommend that students and mathematics teachers should continue to use the Madrasati platform in the everyday school environment. more...
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- 2024
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45. Dilemma of commercial organ transplant in the Middle East
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Alameer, Reem M., Alhammadi, Ahmed A., Taha, Yusri, Al Goufi, Talal, and Almaghrabi, Reem S.
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- 2024
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46. Advancing digital healthcare in Somalia: a review of modern technologies and their implications
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Ahmed, Mohamed Mustaf, Dirie, Najib Isse, Mohamud, Abdirahman Khalif, Elmi, Abdikadir Hussein, Musa, Shuaibu Saidu, Alhammadi, Omar Abdulkarim Saeed, Lemma, Misha Abayneh, Uwamahoro, Joselyne, Bananeza, Roméo, Abdullahi, Yinusa, Othman, Zhinya Kawa, Hamid, Mohammed Raihanatu, Kasimieh, Omar, Labyad, Safouane, and Lucero-Prisno, III, Don Eliseo more...
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- 2024
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47. Postoperative delirium in oral and maxillofacial surgery: a scoping review
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Alhammadi, Eman, Kuhlmann, Julian Max, Rana, Majeed, Frohnhofen, Helmut, and Moellmann, Henriette Louise
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- 2024
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48. Skeletal, dentoalveolar and soft tissue changes after stabilization splint treatment for patients with temporomandibular joint disorders
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Al-hadad, Saba Ahmed, Ahmed, Madiha Mohammed Saleh, Zhao, Yunshan, Wang, Lu, Hu, Wanqing, Li, Chushen, Chen, Xi, and Alhammadi, Maged Sultan
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- 2024
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49. Evaluation of an objective staging system for assessment of cervical vertebral maturation
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Alhamady, Ahlam M., Ishaq, Ramy Abdul Rahman, Alhammadi, Maged S., Almashraqi, Abeer A., and Alhashimi, Najah
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- 2024
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50. Stereolithography 3D printing for vanadium redox flow battery: Electrolyte compatibility and watertightness of 3D-printed parts
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Anugrah Andisetiawan, Tawaddod Alkindi, Saleh Atatreh, Ayoob Alhammadi, Abdulmonem Fetyan, Musbaudeen O. Bamgbopa, and Rahmat Agung Susantyoko
- Subjects
Vanadium redox flow batteries ,Additive manufacturing ,Stereolithography ,Watertightness ,Chemical compatibility ,Prototyping ,Technology - Abstract
Additive manufacturing or 3D printing offers a fast and convenient way of fabricating parts. The additive manufacturing method can create not only complex (intricate) part structures (geometries), which are not possible or very expensive if using conventional subtractive manufacturing methods, but also to create parts with significantly less material’s waste compared to conventional subtractive manufacturing methods, which is potentially an excellent benefit for the 3D-printed parts’ life-cycle assessment to be environmentally friendly. Stereolithography (SLA) is a promising method for creating parts for vanadium redox flow batteries (VRFB), as SLA produces watertight and isotropic parts, unlike those made by as-printed fused filament fabrication (FFF) technology. Previous studies lack systematic investigation of material compatibility of SLA 3D-printed parts subjected to VRFB electrolyte or sulfuric acid. Herein, we tested the chemical compatibility, tensile mechanical strength, and swelling after immersion to 6.0 M sulfuric acid (H2SO4) solution, following ASTM D543 standard for testing the resistance of plastics to chemical reagents, as well as the watertightness of test specimens, which were 3D-printed from a feedstock of High-Temp-V2 resin (Formlabs, USA). We found no significant change in the material dimension, weight, and tensile strength between pristine and post-submerged specimens. In another experiment utilizing 1200 ml/min of VRFB electrolyte (51 % V3+ and 49 % V4+ + 2 mol L−1 H2SO4) on one side and 50 ml/min of de-ionized water (DI water) on the other side, we found the SLA 3D-printed part can withstand the pressure from the flowing liquids, and is watertight with no major leakage; however, we observed an increase in water conductivity (from 1.4 µS/cm to 8.4 µS/cm after 96 hours) due to small amount of H+ ion crossed through the 300-micrometer-thickness material, as evidenced from the pH increase of the DI water. Given the apparent slow rate of transfer (the ionic-conductivity increment is very low, which is four order-of-magnitude smaller compared to that of the VRFB electrolyte at 228.8 mS/cm), it would take significantly large timescales to detect the equilibrium concentration for both sides. Utilizing this study’s valuable information for applying SLA 3D-printed material for VRFB systems, we demonstrated producing complex specialized / customized designs for VRFB, such as 3D-printed flow frame, 3D-printed bespoke sensor mounting, and 3D-printed customized tank. We also observed that translucent 3D-printed parts are useful for quick visual inspection of electrolyte flow for VRFB troubleshooting and diagnosis. more...
- Published
- 2025
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