5,673 results on '"Babu, R."'
Search Results
152. Generalize then Adapt: Source-Free Domain Adaptive Semantic Segmentation
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Kundu, Jogendra Nath, Kulkarni, Akshay, Singh, Amit, Jampani, Varun, and Babu, R. Venkatesh
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Unsupervised domain adaptation (DA) has gained substantial interest in semantic segmentation. However, almost all prior arts assume concurrent access to both labeled source and unlabeled target, making them unsuitable for scenarios demanding source-free adaptation. In this work, we enable source-free DA by partitioning the task into two: a) source-only domain generalization and b) source-free target adaptation. Towards the former, we provide theoretical insights to develop a multi-head framework trained with a virtually extended multi-source dataset, aiming to balance generalization and specificity. Towards the latter, we utilize the multi-head framework to extract reliable target pseudo-labels for self-training. Additionally, we introduce a novel conditional prior-enforcing auto-encoder that discourages spatial irregularities, thereby enhancing the pseudo-label quality. Experiments on the standard GTA5-to-Cityscapes and SYNTHIA-to-Cityscapes benchmarks show our superiority even against the non-source-free prior-arts. Further, we show our compatibility with online adaptation enabling deployment in a sequentially changing environment., Comment: ICCV 2021. Project page: http://sites.google.com/view/sfdaseg
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- 2021
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153. Measurement of Transverse Spin Dependent Azimuthal Correlations of Charged Pion(s) in $p^{\uparrow} p$ Collisions at $\sqrt s = 200$ GeV at STAR
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Pokhrel, Babu R.
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Nuclear Experiment - Abstract
At the leading twist, the transversity distribution function, $h^{q}_{1}(x)$, where $x$ is the longitudinal momentum fraction of the proton carried by quark $q$, encodes the transverse spin structure of the nucleon. Extraction of it is difficult because of its chiral-odd nature. In transversely polarized proton-proton collisions ($p^\uparrow p$), $h_{1}^{q}(x)$ can be coupled with another chiral-odd partner, a spin-dependent fragmentation function (FF). The resulting asymmetries in hadron(s) azimuthal correlations directly probe $h_{1}^{q}(x)$. We report the measurement of correlation asymmetries for charged pion(s) in $p^\uparrow p$, through the Collins and the Interference FF channel., Comment: 6 pages, 3 figures, Submission to SciPost Proceedings-DIS2021
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- 2021
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154. Class Balancing GAN with a Classifier in the Loop
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Rangwani, Harsh, Mopuri, Konda Reddy, and Babu, R. Venkatesh
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Generative Adversarial Networks (GANs) have swiftly evolved to imitate increasingly complex image distributions. However, majority of the developments focus on performance of GANs on balanced datasets. We find that the existing GANs and their training regimes which work well on balanced datasets fail to be effective in case of imbalanced (i.e. long-tailed) datasets. In this work we introduce a novel theoretically motivated Class Balancing regularizer for training GANs. Our regularizer makes use of the knowledge from a pre-trained classifier to ensure balanced learning of all the classes in the dataset. This is achieved via modelling the effective class frequency based on the exponential forgetting observed in neural networks and encouraging the GAN to focus on underrepresented classes. We demonstrate the utility of our regularizer in learning representations for long-tailed distributions via achieving better performance than existing approaches over multiple datasets. Specifically, when applied to an unconditional GAN, it improves the FID from $13.03$ to $9.01$ on the long-tailed iNaturalist-$2019$ dataset., Comment: UAI 2021
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- 2021
155. Deep Implicit Surface Point Prediction Networks
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Venkatesh, Rahul, Karmali, Tejan, Sharma, Sarthak, Ghosh, Aurobrata, Babu, R. Venkatesh, Jeni, László A., and Singh, Maneesh
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Graphics - Abstract
Deep neural representations of 3D shapes as implicit functions have been shown to produce high fidelity models surpassing the resolution-memory trade-off faced by the explicit representations using meshes and point clouds. However, most such approaches focus on representing closed shapes. Unsigned distance function (UDF) based approaches have been proposed recently as a promising alternative to represent both open and closed shapes. However, since the gradients of UDFs vanish on the surface, it is challenging to estimate local (differential) geometric properties like the normals and tangent planes which are needed for many downstream applications in vision and graphics. There are additional challenges in computing these properties efficiently with a low-memory footprint. This paper presents a novel approach that models such surfaces using a new class of implicit representations called the closest surface-point (CSP) representation. We show that CSP allows us to represent complex surfaces of any topology (open or closed) with high fidelity. It also allows for accurate and efficient computation of local geometric properties. We further demonstrate that it leads to efficient implementation of downstream algorithms like sphere-tracing for rendering the 3D surface as well as to create explicit mesh-based representations. Extensive experimental evaluation on the ShapeNet dataset validate the above contributions with results surpassing the state-of-the-art., Comment: 22 pages, 17 figures
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- 2021
156. Nephrocalcinosis in a 3-year-old child with hypocalcemia: Answers
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Sait, Benazer, Chidambaram, Aakash Chandran, Vidhyasagar, Krishnamoorthy, Dinesh Babu, R M, and Sagayaraj, Benjamin
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Children -- Diseases ,Hypocalcemia -- Diagnosis -- Care and treatment ,Calcinosis -- Risk factors -- Diagnosis ,Health - Abstract
Author(s): Benazer Sait [sup.1] , Aakash Chandran Chidambaram [sup.1] , Krishnamoorthy Vidhyasagar [sup.1] , R M Dinesh Babu [sup.1] , Benjamin Sagayaraj [sup.1] Author Affiliations: (1) grid.412431.1, 0000 0004 0444 [...]
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- 2023
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157. Pyrolysis-assisted synthesis of two-dimensional graphitic carbon nitride nanosheets embedded with transition metal oxide (Ni or Fe) for high-performance asymmetric supercapacitors
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Santos, R.S., Suresh Babu, R., Lessa, T.S., Samyn, L.M., Vinodh, R., Vivekananth, R., and de Barros, A.L.F.
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- 2024
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158. Effect of blue light illumination on atmospheric corrosion and bacterial adhesion on copper
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Chang, Tingru, Leygraf, Christofer, Herting, Gunilla, Fan, Yanmiao, Babu, R. Prasath, Malkoch, Michael, Blomberg, Eva, and Odnevall, Inger
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- 2024
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159. Flexible supercapacitors based on carbon fiber cloth coated copper hexacyanoferrate nanoparticles as positive electrode material
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Samyn, L.M., Babu, R. Suresh, Vinodh, R., Vivekananth, R., Haddad, D.B., and de Barros, A.L.F.
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- 2024
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160. Influence of various solvents in extraction of natural pigments from Annona atemoya and Physalis peruviana as photosensitizers for dye-sensitized solar cells
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da Conceição, L.R.B., da Cunha, H.O., Leite, A.M.B., Rodrigues, J.A.F.C.R., Babu, R. Suresh, and de Barros, A.L.F.
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- 2024
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161. Your Classifier can Secretly Suffice Multi-Source Domain Adaptation
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Venkat, Naveen, Kundu, Jogendra Nath, Singh, Durgesh Kumar, Revanur, Ambareesh, and Babu, R. Venkatesh
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Computer Science - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Multi-Source Domain Adaptation (MSDA) deals with the transfer of task knowledge from multiple labeled source domains to an unlabeled target domain, under a domain-shift. Existing methods aim to minimize this domain-shift using auxiliary distribution alignment objectives. In this work, we present a different perspective to MSDA wherein deep models are observed to implicitly align the domains under label supervision. Thus, we aim to utilize implicit alignment without additional training objectives to perform adaptation. To this end, we use pseudo-labeled target samples and enforce a classifier agreement on the pseudo-labels, a process called Self-supervised Implicit Alignment (SImpAl). We find that SImpAl readily works even under category-shift among the source domains. Further, we propose classifier agreement as a cue to determine the training convergence, resulting in a simple training algorithm. We provide a thorough evaluation of our approach on five benchmarks, along with detailed insights into each component of our approach., Comment: NeurIPS 2020. Project page: https://sites.google.com/view/simpal
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- 2021
162. Notification of Vivek Maize Hybrid 25
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Mahajan, V., Babu, R., Mani, V. P., Gupta, H. S., Koranga, K. S., Bisht, G. S., Pant, M. C., Pant, S. K., and Gopinath, K. A.
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- 2008
163. Data-Driven Incident Detection in Power Distribution Systems
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Aguiar, Nayara, Gupta, Vijay, Trevizan, Rodrigo D., Chalamala, Babu R., and Byrne, Raymond H.
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Electrical Engineering and Systems Science - Signal Processing ,Electrical Engineering and Systems Science - Systems and Control - Abstract
In a power distribution network with energy storage systems (ESS) and advanced controls, traditional monitoring and protection schemes are not well suited for detecting anomalies such as malfunction of controllable devices. In this work, we propose a data-driven technique for the detection of incidents relevant to the operation of ESS in distribution grids. This approach leverages the causal relationship observed among sensor data streams, and does not require prior knowledge of the system model or parameters. Our methodology includes a data augmentation step which allows for the detection of incidents even when sensing is scarce. The effectiveness of our technique is illustrated through case studies which consider active power dispatch and reactive power control of ESS.
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- 2021
164. Engineering Strategies for the Biovalorization of Hemicellulosic Fraction into Value-Added Products: An Approach Toward Biorefinery Concept
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Chandna, Teena, Gorantla, Sai Susmita, Chandukishore, T., Satish Babu, R., Prabhu, Ashish A., Patra, Jayanta Kumar, Series Editor, Das, Gitishree, Series Editor, Sarkar, Angana, editor, and Ahmed, Idris Adewale, editor
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- 2023
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165. Fast and Accurate YOLO Framework for Live Object Detection
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Ajith Babu, R. R., Dhushyanth, H. M., Hemanth, R., Naveen Kumar, M., Sushma, B. A., Loganayagi, B., 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, Ranganathan, G., editor, Papakostas, George A., editor, and Rocha, Álvaro, editor
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- 2023
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166. Potentials and Opportunities of Agroforestry Under Climate Change Scenario
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Sannagoudar, Manjanagouda S., Kumar, G. K. Prajwal, Khandibagur, Vanitha, Ghosh, Avijit, Singh, Amit K., Rajanna, G. A., Halli, Hanamant M., Wasnik, V. K., Praveen, B. R., Babu, R. T. Chethan, Singhal, Rajesh Kumar, editor, Ahmed, Shahid, editor, Pandey, Saurabh, editor, and Chand, Subhash, editor
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- 2023
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167. Sustainable Use of Paddy Straw as Livestock Feed: A Climate Resilient Approach to Crop Residue Burning
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Praveen, B. R., Sannagoudar, Manjanagouda S., Babu, R. T. Chethan, Rajanna, G. A., Singh, Magan, Kumar, Sandeep, Kumar, Rakesh, Wasnik, V. K., Singhal, Rajesh Kumar, editor, Ahmed, Shahid, editor, Pandey, Saurabh, editor, and Chand, Subhash, editor
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- 2023
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168. Federated Machine Learning for Self-driving Car and Minimizing Data Heterogeneity Effect
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Pokharel, Prastav, Dawadi, Babu R., 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, Meesad, Phayung, editor, Sodsee, Sunantha, editor, Jitsakul, Watchareewan, editor, and Tangwannawit, Sakchai, editor
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- 2023
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169. A Comparative Study on Seismic Response of Pile in Liquefiable Soils Considering Level and Sloping Ground
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Basavanagowda, G. M., Dinesh, S. V., Babu, R. Ramesh, Govindaraju, L., Chen, Sheng-Hong, Series Editor, di Prisco, Marco, Series Editor, Vayas, Ioannis, Series Editor, Jakka, Ravi S., editor, Singh, Yogendra, editor, Sitharam, T. G., editor, and Maheshwari, Bal Krishna, editor
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- 2023
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170. Experimental Studies on the Dynamic Response of Buildings Supported on Pile and Piled Raft Foundation in Soft Clay
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Subramanya, K. G., Govindaraju, L., Ramesh Babu, R., Chen, Sheng-Hong, Series Editor, di Prisco, Marco, Series Editor, Vayas, Ioannis, Series Editor, Jakka, Ravi S., editor, Singh, Yogendra, editor, Sitharam, T. G., editor, and Maheshwari, Bal Krishna, editor
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- 2023
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171. RPA Adoption in Healthcare Application
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Jayashree, K., Babu, R., Sathya, A., Srinivasan, S. P., Howlett, Robert J., Series Editor, Jain, Lakhmi C., Series Editor, Bhattacharyya, Siddhartha, editor, Banerjee, Jyoti Sekhar, editor, and De, Debashis, editor
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- 2023
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172. Compelling Impacts of Natural Polymer-Centered Drug Delivery Systems as Prophylactic and Therapeutic Approaches in Various Pulmonary Disorders/Lung Diseases
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Gopal, Kruthi, Pathak, Suhrud, Deruiter, Jack, Nadar, Rishi M., Ramesh, Sindhu, Babu, R. Jayachandra, Alexander, Courtney Suzanne Watts, Dua, Kamal, Clark, Randall, Moore, Timothy, Dhanasekaran, Muralikrishnan, Dureja, Harish, editor, Adams, Jon, editor, Löbenberg, Raimar, editor, Andreoli Pinto, Terezinha de Jesus, editor, and Dua, Kamal, editor
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- 2023
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173. Overview of Waste Stabilization Ponds in Developing Countries
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Kadri, Syeda Ulfath Tazeen, Tavanappanavar, Adinath N., Nagesh Babu, R., Bilal, Muhammad, Singh, Bhaskar, Gupta, Sanjay Kumar, Bharagava, Ram Naresh, Govarthanan, Muthusamy, Savanur, Mohammed Azharuddin, Mulla, Sikandar I., Barceló, Damià, Series Editor, de Boer, Jacob, Editorial Board Member, Kostianoy, Andrey G., Series Editor, Garrigues, Philippe, Editorial Board Member, Hutzinger, Otto, Founding Editor, Gu, Ji-Dong, Editorial Board Member, Jones, Kevin C., Editorial Board Member, Knepper, Thomas P., Editorial Board Member, Negm, Abdelazim M., Editorial Board Member, Newton, Alice, Editorial Board Member, Nghiem, Duc Long, Editorial Board Member, Garcia-Segura, Sergi, Editorial Board Member, and Nasr, Mahmoud, editor
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- 2023
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174. Performance Analysis of Data Sharing Using Blockchain Technology in IoT Security Issues
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Ganesh Babu, R., Yuvaraj, S., Muthu Manjula, M., Kaviyapriya, S., Harini, R., 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, Gupta, Deepak, editor, Khanna, Ashish, editor, Hassanien, Aboul Ella, editor, Anand, Sameer, editor, and Jaiswal, Ajay, editor
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- 2023
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175. IoT Security Using Machine Learning Techniques
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Ganesh Babu, R., Markkandan, S., Vinotha, V., Priyadarshini, S., Kaviya, V., 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, Maurya, Sudhanshu, editor, Peddoju, Sateesh K., editor, Ahmad, Badlishah, editor, and Chihi, Ines, editor
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- 2023
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176. Quantum-Accelerated Hyperparameter Tuning for Dynamic NLP Models
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S, Ravikumar, Y, Arockia Raj, Babu, R., K, Vijay, and Ramani, R.
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- 2024
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177. Unravelling Cadmium induced noncoding RNAs and their validations from Finger millet
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Suresh Kumar C., Nagesh Babu R., and Shafia Hoor F.
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cis-regulatory element ,go analysis ,nb-arc domain ,rt-qpcr ,Biochemistry ,QD415-436 - Abstract
MicroRNAs (miRNAs) play important roles in plant responses to abiotic stress. Numerous studies have been increasing in respect to miRNA identification under stress conditions. In this study we analysed the expression patterns of seven miRNAs (miR156, 159, 169, 396, 397, 398 and 399) from cadmium stressed seedlings of Finger millet by RT-qPCR. Further these miRNAs were cloned and sequenced, which conformed its presence. Predicted targets and GO analysis of the miRNAs were found to be involved in diverse cellular processes in plants, development, apoptosis, detoxification, catalysis, protein modification. Cis-regulatory elements identification suggested their involvement in regulatory networks. This is the first study to demonstrate differentially expressed miRNA in Finger millet under cadmium stress. Findings in the present study prominence the role played by miRNAs in Finger millet under cadmium stress.
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- 2023
178. Controller placement problem during SDN deployment in the ISP/Telco networks: A survey
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Binod Sapkota, Babu R Dawadi, and Shashidhar R Joshi
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controller load balancing ,ISP/Telco ,Latency ,MCPP ,SDN ,Engineering (General). Civil engineering (General) ,TA1-2040 ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
Abstract With the successful implementation of Software‐Defined Networking (SDN) in data center networking, the way forward for its deployment in the ISP/Telco network is becoming prominent. Small and medium‐sized networks may easily adopt SDN. The research on SDN deployment and implementation for a large‐scale network is continuing. This paper properly presents the current research status of Controller Placement Problem (CPP) and Multi‐CPP (MCPP) over SDN with their specific challenges and provides a comprehensive review of the major performance metrics, that is, latency, and controller load balancing techniques. This survey highlights the use of network partitioning‐based CPP and clustering approaches and their benefits in the context of SDN deployment. Moreover, this paper highlights the importance of implementing SDN and SDN security issues into ISP/Telco networks. Finally, we provide some key areas of ongoing research and discuss the future research direction regarding the various SDN‐based Controller Placement (CP) issues in the next‐generation IP and advanced networking technologies.
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- 2024
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179. Guided Adversarial Attack for Evaluating and Enhancing Adversarial Defenses
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Sriramanan, Gaurang, Addepalli, Sravanti, Baburaj, Arya, and Babu, R. Venkatesh
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
Advances in the development of adversarial attacks have been fundamental to the progress of adversarial defense research. Efficient and effective attacks are crucial for reliable evaluation of defenses, and also for developing robust models. Adversarial attacks are often generated by maximizing standard losses such as the cross-entropy loss or maximum-margin loss within a constraint set using Projected Gradient Descent (PGD). In this work, we introduce a relaxation term to the standard loss, that finds more suitable gradient-directions, increases attack efficacy and leads to more efficient adversarial training. We propose Guided Adversarial Margin Attack (GAMA), which utilizes function mapping of the clean image to guide the generation of adversaries, thereby resulting in stronger attacks. We evaluate our attack against multiple defenses and show improved performance when compared to existing attacks. Further, we propose Guided Adversarial Training (GAT), which achieves state-of-the-art performance amongst single-step defenses by utilizing the proposed relaxation term for both attack generation and training., Comment: NeurIPS 2020 (Spotlight)
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- 2020
180. Completely Self-Supervised Crowd Counting via Distribution Matching
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Sam, Deepak Babu, Agarwalla, Abhinav, Joseph, Jimmy, Sindagi, Vishwanath A., Babu, R. Venkatesh, and Patel, Vishal M.
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Dense crowd counting is a challenging task that demands millions of head annotations for training models. Though existing self-supervised approaches could learn good representations, they require some labeled data to map these features to the end task of density estimation. We mitigate this issue with the proposed paradigm of complete self-supervision, which does not need even a single labeled image. The only input required to train, apart from a large set of unlabeled crowd images, is the approximate upper limit of the crowd count for the given dataset. Our method dwells on the idea that natural crowds follow a power law distribution, which could be leveraged to yield error signals for backpropagation. A density regressor is first pretrained with self-supervision and then the distribution of predictions is matched to the prior by optimizing Sinkhorn distance between the two. Experiments show that this results in effective learning of crowd features and delivers significant counting performance. Furthermore, we establish the superiority of our method in less data setting as well. The code and models for our approach is available at https://github.com/val-iisc/css-ccnn.
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- 2020
181. Unsupervised Cross-Modal Alignment for Multi-Person 3D Pose Estimation
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Kundu, Jogendra Nath, Revanur, Ambareesh, Waghmare, Govind Vitthal, Venkatesh, Rahul Mysore, and Babu, R. Venkatesh
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Computer Science - Computer Vision and Pattern Recognition - Abstract
We present a deployment friendly, fast bottom-up framework for multi-person 3D human pose estimation. We adopt a novel neural representation of multi-person 3D pose which unifies the position of person instances with their corresponding 3D pose representation. This is realized by learning a generative pose embedding which not only ensures plausible 3D pose predictions, but also eliminates the usual keypoint grouping operation as employed in prior bottom-up approaches. Further, we propose a practical deployment paradigm where paired 2D or 3D pose annotations are unavailable. In the absence of any paired supervision, we leverage a frozen network, as a teacher model, which is trained on an auxiliary task of multi-person 2D pose estimation. We cast the learning as a cross-modal alignment problem and propose training objectives to realize a shared latent space between two diverse modalities. We aim to enhance the model's ability to perform beyond the limiting teacher network by enriching the latent-to-3D pose mapping using artificially synthesized multi-person 3D scene samples. Our approach not only generalizes to in-the-wild images, but also yields a superior trade-off between speed and performance, compared to prior top-down approaches. Our approach also yields state-of-the-art multi-person 3D pose estimation performance among the bottom-up approaches under consistent supervision levels., Comment: ECCV 2020
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- 2020
182. Class-Incremental Domain Adaptation
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Kundu, Jogendra Nath, Venkatesh, Rahul Mysore, Venkat, Naveen, Revanur, Ambareesh, and Babu, R. Venkatesh
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Computer Science - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition ,Statistics - Machine Learning - Abstract
We introduce a practical Domain Adaptation (DA) paradigm called Class-Incremental Domain Adaptation (CIDA). Existing DA methods tackle domain-shift but are unsuitable for learning novel target-domain classes. Meanwhile, class-incremental (CI) methods enable learning of new classes in absence of source training data but fail under a domain-shift without labeled supervision. In this work, we effectively identify the limitations of these approaches in the CIDA paradigm. Motivated by theoretical and empirical observations, we propose an effective method, inspired by prototypical networks, that enables classification of target samples into both shared and novel (one-shot) target classes, even under a domain-shift. Our approach yields superior performance as compared to both DA and CI methods in the CIDA paradigm., Comment: ECCV 2020
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- 2020
183. Appearance Consensus Driven Self-Supervised Human Mesh Recovery
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Kundu, Jogendra Nath, Rakesh, Mugalodi, Jampani, Varun, Venkatesh, Rahul Mysore, and Babu, R. Venkatesh
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Computer Science - Computer Vision and Pattern Recognition - Abstract
We present a self-supervised human mesh recovery framework to infer human pose and shape from monocular images in the absence of any paired supervision. Recent advances have shifted the interest towards directly regressing parameters of a parametric human model by supervising them on large-scale datasets with 2D landmark annotations. This limits the generalizability of such approaches to operate on images from unlabeled wild environments. Acknowledging this we propose a novel appearance consensus driven self-supervised objective. To effectively disentangle the foreground (FG) human we rely on image pairs depicting the same person (consistent FG) in varied pose and background (BG) which are obtained from unlabeled wild videos. The proposed FG appearance consistency objective makes use of a novel, differentiable Color-recovery module to obtain vertex colors without the need for any appearance network; via efficient realization of color-picking and reflectional symmetry. We achieve state-of-the-art results on the standard model-based 3D pose estimation benchmarks at comparable supervision levels. Furthermore, the resulting colored mesh prediction opens up the usage of our framework for a variety of appearance-related tasks beyond the pose and shape estimation, thus establishing our superior generalizability., Comment: ECCV 2020 (Oral)
- Published
- 2020
184. Land Use and Land Cover Classification using a Human Group based Particle Swarm Optimization Algorithm with a LSTM classifier on hybrid-pre-processing Remote Sensing Images
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Babu, R. Ganesh, Maheswari, K. Uma, Zarro, C., Parameshachari, B. D., and Ullo, S. L.
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Land use and land cover (LULC) classification using remote sensing imagery plays a vital role in many environment modeling and land use inventories. In this study, a hybrid feature optimization algorithm along with a deep learning classifier is proposed to improve the performance of LULC classification, helping to predict wildlife habitat, deteriorating environmental quality, haphazard, etc. LULC classification is assessed using Sat 4, Sat 6 and Eurosat datasets. After the selection of remote sensing images, normalization and histogram equalization methods are used to improve the quality of the images. Then, a hybrid optimization is accomplished by using the Local Gabor Binary Pattern Histogram Sequence (LGBPHS), the Histogram of Oriented Gradient (HOG) and Haralick texture features, for the feature extraction from the selected images. The benefits of this hybrid optimization are a high discriminative power and invariance to color and grayscale images. Next, a Human Group based Particle Swarm Optimization (PSO) algorithm is applied to select the optimal features, whose benefits are fast convergence rate and easy to implement. After selecting the optimal feature values, a Long Short Term Memory (LSTM) network is utilized to classify the LULC classes. Experimental results showed that the Human Group based PSO algorithm with a LSTM classifier effectively well differentiates the land use and land cover classes in terms of classification accuracy, recall and precision. An improvement of 2.56% in accuracy is achieved compared to the existing models GoogleNet, VGG, AlexNet, ConvNet, when the proposed method is applied., Comment: 21 pages, 11 figures, submitted to the Special Issue Multimedia Vision and Machine Learning for Remote Sensing di MDPI Remote Sensing (in review)
- Published
- 2020
185. Fusion of Deep and Non-Deep Methods for Fast Super-Resolution of Satellite Images
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Nayak, Gaurav Kumar, Jain, Saksham, Babu, R Venkatesh, and Chakraborty, Anirban
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Computer Science - Computer Vision and Pattern Recognition - Abstract
In the emerging commercial space industry there is a drastic increase in access to low cost satellite imagery. The price for satellite images depends on the sensor quality and revisit rate. This work proposes to bridge the gap between image quality and the price by improving the image quality via super-resolution (SR). Recently, a number of deep SR techniques have been proposed to enhance satellite images. However, none of these methods utilize the region-level context information, giving equal importance to each region in the image. This, along with the fact that most state-of-the-art SR methods are complex and cumbersome deep models, the time taken to process very large satellite images can be impractically high. We, propose to handle this challenge by designing an SR framework that analyzes the regional information content on each patch of the low-resolution image and judiciously chooses to use more computationally complex deep models to super-resolve more structure-rich regions on the image, while using less resource-intensive non-deep methods on non-salient regions. Through extensive experiments on a large satellite image, we show substantial decrease in inference time while achieving similar performance to that of existing deep SR methods over several evaluation measures like PSNR, MSE and SSIM., Comment: Accepted in IEEE BigMM 2020
- Published
- 2020
186. Saliency-driven Class Impressions for Feature Visualization of Deep Neural Networks
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Addepalli, Sravanti, Tamboli, Dipesh, Babu, R. Venkatesh, and Banerjee, Biplab
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Computer Science - Computer Vision and Pattern Recognition - Abstract
In this paper, we propose a data-free method of extracting Impressions of each class from the classifier's memory. The Deep Learning regime empowers classifiers to extract distinct patterns (or features) of a given class from training data, which is the basis on which they generalize to unseen data. Before deploying these models on critical applications, it is advantageous to visualize the features considered to be essential for classification. Existing visualization methods develop high confidence images consisting of both background and foreground features. This makes it hard to judge what the crucial features of a given class are. In this work, we propose a saliency-driven approach to visualize discriminative features that are considered most important for a given task. Another drawback of existing methods is that confidence of the generated visualizations is increased by creating multiple instances of the given class. We restrict the algorithm to develop a single object per image, which helps further in extracting features of high confidence and also results in better visualizations. We further demonstrate the generation of negative images as naturally fused images of two or more classes., Comment: ICIP 2020
- Published
- 2020
187. Learning to Count in the Crowd from Limited Labeled Data
- Author
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Sindagi, Vishwanath A., Yasarla, Rajeev, Babu, Deepak Sam, Babu, R. Venkatesh, and Patel, Vishal M.
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Recent crowd counting approaches have achieved excellent performance. However, they are essentially based on fully supervised paradigm and require large number of annotated samples. Obtaining annotations is an expensive and labour-intensive process. In this work, we focus on reducing the annotation efforts by learning to count in the crowd from limited number of labeled samples while leveraging a large pool of unlabeled data. Specifically, we propose a Gaussian Process-based iterative learning mechanism that involves estimation of pseudo-ground truth for the unlabeled data, which is then used as supervision for training the network. The proposed method is shown to be effective under the reduced data (semi-supervised) settings for several datasets like ShanghaiTech, UCF-QNRF, WorldExpo, UCSD, etc. Furthermore, we demonstrate that the proposed method can be leveraged to enable the network in learning to count from synthetic dataset while being able to generalize better to real-world datasets (synthetic-to-real transfer)., Comment: Accepted at ECCV 2020
- Published
- 2020
188. Kinematic-Structure-Preserved Representation for Unsupervised 3D Human Pose Estimation
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Kundu, Jogendra Nath, Seth, Siddharth, M V, Rahul, Rakesh, Mugalodi, Babu, R. Venkatesh, and Chakraborty, Anirban
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
Estimation of 3D human pose from monocular image has gained considerable attention, as a key step to several human-centric applications. However, generalizability of human pose estimation models developed using supervision on large-scale in-studio datasets remains questionable, as these models often perform unsatisfactorily on unseen in-the-wild environments. Though weakly-supervised models have been proposed to address this shortcoming, performance of such models relies on availability of paired supervision on some related tasks, such as 2D pose or multi-view image pairs. In contrast, we propose a novel kinematic-structure-preserved unsupervised 3D pose estimation framework, which is not restrained by any paired or unpaired weak supervisions. Our pose estimation framework relies on a minimal set of prior knowledge that defines the underlying kinematic 3D structure, such as skeletal joint connectivity information with bone-length ratios in a fixed canonical scale. The proposed model employs three consecutive differentiable transformations named as forward-kinematics, camera-projection and spatial-map transformation. This design not only acts as a suitable bottleneck stimulating effective pose disentanglement but also yields interpretable latent pose representations avoiding training of an explicit latent embedding to pose mapper. Furthermore, devoid of unstable adversarial setup, we re-utilize the decoder to formalize an energy-based loss, which enables us to learn from in-the-wild videos, beyond laboratory settings. Comprehensive experiments demonstrate our state-of-the-art unsupervised and weakly-supervised pose estimation performance on both Human3.6M and MPI-INF-3DHP datasets. Qualitative results on unseen environments further establish our superior generalization ability., Comment: AAAI 2020 (Oral)
- Published
- 2020
189. From Image Collections to Point Clouds with Self-supervised Shape and Pose Networks
- Author
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Navaneet, K L, Mathew, Ansu, Kashyap, Shashank, Hung, Wei-Chih, Jampani, Varun, and Babu, R. Venkatesh
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
Reconstructing 3D models from 2D images is one of the fundamental problems in computer vision. In this work, we propose a deep learning technique for 3D object reconstruction from a single image. Contrary to recent works that either use 3D supervision or multi-view supervision, we use only single view images with no pose information during training as well. This makes our approach more practical requiring only an image collection of an object category and the corresponding silhouettes. We learn both 3D point cloud reconstruction and pose estimation networks in a self-supervised manner, making use of differentiable point cloud renderer to train with 2D supervision. A key novelty of the proposed technique is to impose 3D geometric reasoning into predicted 3D point clouds by rotating them with randomly sampled poses and then enforcing cycle consistency on both 3D reconstructions and poses. In addition, using single-view supervision allows us to do test-time optimization on a given test image. Experiments on the synthetic ShapeNet and real-world Pix3D datasets demonstrate that our approach, despite using less supervision, can achieve competitive performance compared to pose-supervised and multi-view supervised approaches., Comment: Accepted to CVPR 2020; Codes are available at https://github.com/val-iisc/ssl_3d_recon
- Published
- 2020
190. Adversarial Fooling Beyond 'Flipping the Label'
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Mopuri, Konda Reddy, Shaj, Vaisakh, and Babu, R. Venkatesh
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Recent advancements in CNNs have shown remarkable achievements in various CV/AI applications. Though CNNs show near human or better than human performance in many critical tasks, they are quite vulnerable to adversarial attacks. These attacks are potentially dangerous in real-life deployments. Though there have been many adversarial attacks proposed in recent years, there is no proper way of quantifying the effectiveness of these attacks. As of today, mere fooling rate is used for measuring the susceptibility of the models, or the effectiveness of adversarial attacks. Fooling rate just considers label flipping and does not consider the cost of such flipping, for instance, in some deployments, flipping between two species of dogs may not be as severe as confusing a dog category with that of a vehicle. Therefore, the metric to quantify the vulnerability of the models should capture the severity of the flipping as well. In this work we first bring out the drawbacks of the existing evaluation and propose novel metrics to capture various aspects of the fooling. Further, for the first time, we present a comprehensive analysis of several important adversarial attacks over a set of distinct CNN architectures. We believe that the presented analysis brings valuable insights about the current adversarial attacks and the CNN models., Comment: CVPR-AMLCV-2020
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- 2020
191. Single-step Adversarial training with Dropout Scheduling
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S., Vivek B. and Babu, R. Venkatesh
- Subjects
Computer Science - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Deep learning models have shown impressive performance across a spectrum of computer vision applications including medical diagnosis and autonomous driving. One of the major concerns that these models face is their susceptibility to adversarial attacks. Realizing the importance of this issue, more researchers are working towards developing robust models that are less affected by adversarial attacks. Adversarial training method shows promising results in this direction. In adversarial training regime, models are trained with mini-batches augmented with adversarial samples. Fast and simple methods (e.g., single-step gradient ascent) are used for generating adversarial samples, in order to reduce computational complexity. It is shown that models trained using single-step adversarial training method (adversarial samples are generated using non-iterative method) are pseudo robust. Further, this pseudo robustness of models is attributed to the gradient masking effect. However, existing works fail to explain when and why gradient masking effect occurs during single-step adversarial training. In this work, (i) we show that models trained using single-step adversarial training method learn to prevent the generation of single-step adversaries, and this is due to over-fitting of the model during the initial stages of training, and (ii) to mitigate this effect, we propose a single-step adversarial training method with dropout scheduling. Unlike models trained using existing single-step adversarial training methods, models trained using the proposed single-step adversarial training method are robust against both single-step and multi-step adversarial attacks, and the performance is on par with models trained using computationally expensive multi-step adversarial training methods, in white-box and black-box settings., Comment: CVPR 2020
- Published
- 2020
192. Self-Supervised 3D Human Pose Estimation via Part Guided Novel Image Synthesis
- Author
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Kundu, Jogendra Nath, Seth, Siddharth, Jampani, Varun, Rakesh, Mugalodi, Babu, R. Venkatesh, and Chakraborty, Anirban
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
Camera captured human pose is an outcome of several sources of variation. Performance of supervised 3D pose estimation approaches comes at the cost of dispensing with variations, such as shape and appearance, that may be useful for solving other related tasks. As a result, the learned model not only inculcates task-bias but also dataset-bias because of its strong reliance on the annotated samples, which also holds true for weakly-supervised models. Acknowledging this, we propose a self-supervised learning framework to disentangle such variations from unlabeled video frames. We leverage the prior knowledge on human skeleton and poses in the form of a single part-based 2D puppet model, human pose articulation constraints, and a set of unpaired 3D poses. Our differentiable formalization, bridging the representation gap between the 3D pose and spatial part maps, not only facilitates discovery of interpretable pose disentanglement but also allows us to operate on videos with diverse camera movements. Qualitative results on unseen in-the-wild datasets establish our superior generalization across multiple tasks beyond the primary tasks of 3D pose estimation and part segmentation. Furthermore, we demonstrate state-of-the-art weakly-supervised 3D pose estimation performance on both Human3.6M and MPI-INF-3DHP datasets., Comment: CVPR 2020 (Oral)
- Published
- 2020
193. Universal Source-Free Domain Adaptation
- Author
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Kundu, Jogendra Nath, Venkat, Naveen, M V, Rahul, and Babu, R. Venkatesh
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
There is a strong incentive to develop versatile learning techniques that can transfer the knowledge of class-separability from a labeled source domain to an unlabeled target domain in the presence of a domain-shift. Existing domain adaptation (DA) approaches are not equipped for practical DA scenarios as a result of their reliance on the knowledge of source-target label-set relationship (e.g. Closed-set, Open-set or Partial DA). Furthermore, almost all prior unsupervised DA works require coexistence of source and target samples even during deployment, making them unsuitable for real-time adaptation. Devoid of such impractical assumptions, we propose a novel two-stage learning process. 1) In the Procurement stage, we aim to equip the model for future source-free deployment, assuming no prior knowledge of the upcoming category-gap and domain-shift. To achieve this, we enhance the model's ability to reject out-of-source distribution samples by leveraging the available source data, in a novel generative classifier framework. 2) In the Deployment stage, the goal is to design a unified adaptation algorithm capable of operating across a wide range of category-gaps, with no access to the previously seen source samples. To this end, in contrast to the usage of complex adversarial training regimes, we define a simple yet effective source-free adaptation objective by utilizing a novel instance-level weighting mechanism, named as Source Similarity Metric (SSM). A thorough evaluation shows the practical usability of the proposed learning framework with superior DA performance even over state-of-the-art source-dependent approaches., Comment: CVPR 2020. Code available at https://github.com/val-iisc/usfda
- Published
- 2020
194. Towards Inheritable Models for Open-Set Domain Adaptation
- Author
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Kundu, Jogendra Nath, Venkat, Naveen, Revanur, Ambareesh, M V, Rahul, and Babu, R. Venkatesh
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
There has been a tremendous progress in Domain Adaptation (DA) for visual recognition tasks. Particularly, open-set DA has gained considerable attention wherein the target domain contains additional unseen categories. Existing open-set DA approaches demand access to a labeled source dataset along with unlabeled target instances. However, this reliance on co-existing source and target data is highly impractical in scenarios where data-sharing is restricted due to its proprietary nature or privacy concerns. Addressing this, we introduce a practical DA paradigm where a source-trained model is used to facilitate adaptation in the absence of the source dataset in future. To this end, we formalize knowledge inheritability as a novel concept and propose a simple yet effective solution to realize inheritable models suitable for the above practical paradigm. Further, we present an objective way to quantify inheritability to enable the selection of the most suitable source model for a given target domain, even in the absence of the source data. We provide theoretical insights followed by a thorough empirical evaluation demonstrating state-of-the-art open-set domain adaptation performance., Comment: CVPR 2020 (Oral). Code available at https://github.com/val-iisc/inheritune
- Published
- 2020
195. Towards Achieving Adversarial Robustness by Enforcing Feature Consistency Across Bit Planes
- Author
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Addepalli, Sravanti, S., Vivek B., Baburaj, Arya, Sriramanan, Gaurang, and Babu, R. Venkatesh
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Cryptography and Security ,Computer Science - Machine Learning - Abstract
As humans, we inherently perceive images based on their predominant features, and ignore noise embedded within lower bit planes. On the contrary, Deep Neural Networks are known to confidently misclassify images corrupted with meticulously crafted perturbations that are nearly imperceptible to the human eye. In this work, we attempt to address this problem by training networks to form coarse impressions based on the information in higher bit planes, and use the lower bit planes only to refine their prediction. We demonstrate that, by imposing consistency on the representations learned across differently quantized images, the adversarial robustness of networks improves significantly when compared to a normally trained model. Present state-of-the-art defenses against adversarial attacks require the networks to be explicitly trained using adversarial samples that are computationally expensive to generate. While such methods that use adversarial training continue to achieve the best results, this work paves the way towards achieving robustness without having to explicitly train on adversarial samples. The proposed approach is therefore faster, and also closer to the natural learning process in humans., Comment: CVPR 2020
- Published
- 2020
196. Regularizers for Single-step Adversarial Training
- Author
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Vivek, B. S. and Babu, R. Venkatesh
- Subjects
Computer Science - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition - Abstract
The progress in the last decade has enabled machine learning models to achieve impressive performance across a wide range of tasks in Computer Vision. However, a plethora of works have demonstrated the susceptibility of these models to adversarial samples. Adversarial training procedure has been proposed to defend against such adversarial attacks. Adversarial training methods augment mini-batches with adversarial samples, and typically single-step (non-iterative) methods are used for generating these adversarial samples. However, models trained using single-step adversarial training converge to degenerative minima where the model merely appears to be robust. The pseudo robustness of these models is due to the gradient masking effect. Although multi-step adversarial training helps to learn robust models, they are hard to scale due to the use of iterative methods for generating adversarial samples. To address these issues, we propose three different types of regularizers that help to learn robust models using single-step adversarial training methods. The proposed regularizers mitigate the effect of gradient masking by harnessing on properties that differentiate a robust model from that of a pseudo robust model. Performance of models trained using the proposed regularizers is on par with models trained using computationally expensive multi-step adversarial training methods.
- Published
- 2020
197. 3D-Printed Capsaicin-Loaded Injectable Implants for Targeted Delivery in Obese Patients
- Author
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Annaji, Manjusha, Mita, Nur, Heard, Jessica, Kang, Xuejia, Poudel, Ishwor, Fasina, Oladiran, Baskaran, Padmamalini, Boddu, Sai H. S., Tiwari, Amit K., Chen, Pengyu, Lyman, Candace C., and Babu, R. Jayachandra
- Published
- 2023
- Full Text
- View/download PDF
198. Percutaneous absorption and Skin accumulation of Lorazepam-Diphenhydramine- Haloperidol Carbopol gel in Porcine Ear Skin
- Author
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Neupane, Rabin, Boddu, Sai H. S., Al-Tabakha, Moawia M., Jacob, Shery, Babu, R. Jayachandra, and Tiwari, Amit K.
- Published
- 2023
- Full Text
- View/download PDF
199. Impact of Ta doping on the optoelectronic and catalytic properties of SnO2 thin films
- Author
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Senthilkumar, P., Raja, S., Ramesh Babu, R., Kavinkumar, V., Jothivenkatachalam, K., and Vasuki, G.
- Published
- 2023
- Full Text
- View/download PDF
200. DeGAN : Data-Enriching GAN for Retrieving Representative Samples from a Trained Classifier
- Author
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Addepalli, Sravanti, Nayak, Gaurav Kumar, Chakraborty, Anirban, and Babu, R. Venkatesh
- Subjects
Computer Science - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition ,Statistics - Machine Learning - Abstract
In this era of digital information explosion, an abundance of data from numerous modalities is being generated as well as archived everyday. However, most problems associated with training Deep Neural Networks still revolve around lack of data that is rich enough for a given task. Data is required not only for training an initial model, but also for future learning tasks such as Model Compression and Incremental Learning. A diverse dataset may be used for training an initial model, but it may not be feasible to store it throughout the product life cycle due to data privacy issues or memory constraints. We propose to bridge the gap between the abundance of available data and lack of relevant data, for the future learning tasks of a given trained network. We use the available data, that may be an imbalanced subset of the original training dataset, or a related domain dataset, to retrieve representative samples from a trained classifier, using a novel Data-enriching GAN (DeGAN) framework. We demonstrate that data from a related domain can be leveraged to achieve state-of-the-art performance for the tasks of Data-free Knowledge Distillation and Incremental Learning on benchmark datasets. We further demonstrate that our proposed framework can enrich any data, even from unrelated domains, to make it more useful for the future learning tasks of a given network., Comment: Accepted at AAAI-2020
- Published
- 2019
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