28 results on '"Zhan, Ronghui"'
Search Results
2. Joint tracking and classification of extended targets with complex shapes
- Author
-
Wang, Liping, Zhan, Ronghui, Huang, Yuan, Zhang, Jun, and Zhuang, Zhaowen
- Published
- 2021
- Full Text
- View/download PDF
3. Regional attention-based single shot detector for SAR ship detection
- Author
-
Chen Shiqi, Zhan Ronghui, and Zhang Jun
- Subjects
object detection ,feature extraction ,synthetic aperture radar ,learning (artificial intelligence) ,radar imaging ,ships ,radar detection ,marine radar ,neural nets ,multiorientated objects ,sar ship dataset ,regional attention-based single shot detector ,sar ship detection ,automatic ship detection ,sar imagery ,marine monitoring ,attention mechanism ,automatically learned attentional map ,background interference ,deep-learning techniques ,single shot detection ,extremely small objects ,multilevel feature fusion ,strong semantic information ,multiscale objects ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
Automatic ship detection in SAR imagery has been playing a significant role in the field of marine monitoring but great challenges still exist in real-time application. Despite the exciting progresses made by deep-learning techniques, most detectors failed to yield locations of fairly high quality. Moreover, the ships with variant sizes and aspects are easily omitted especially for small objects under complicated background. To alleviate the above problem, the authors propose an elaborately designed single shot detection framework combined with attention mechanism, which roughly locates the regions of interest via an automatically learned attentional map. This lay the foundation of accurate positioning of extremely small objects since the background interference can be effectively suppressed. Furthermore, a multi-level feature fusion module integrated in top-down and bottom-up manner is adopted to adequately aggregate features from not only adjacent but also distant layers. This strengthens local details and merge strong semantic information, enabling the generation of higher qualified anchors for the efficient detection of multi-scale and multi-orientated objects. Experiments on SAR ship dataset have achieved a promising result, surpassing current state-of-the-art methods.
- Published
- 2019
- Full Text
- View/download PDF
4. Sequential Joint State Estimation and Track Extraction Algorithm Based on Improved Backward Smoothing.
- Author
-
Zhao, Jiuchao, Zhan, Ronghui, Liu, Shengqi, Bo, Liankun, Zhuang, Zhaowen, and Li, Kun
- Subjects
- *
TRACKING algorithms , *RANDOM sets , *TRACKING radar , *DATA analysis , *CONTINUITY - Abstract
In order to further promote the accuracy of state estimation and track extraction capabilities for multi-target tracking, a sequential joint state estimation and track extraction algorithm is proposed in this article. This algorithm is based on backward smoothing under the framework of Labeled Random Finite Set and utilizes label iterative processing to perform outlier removal, invalid short-lived track removal, and track continuity processing in a sequential manner in order to achieve the goal of improving the multi-target tracking performance of the algorithm. Finally, this paper verifies through experimental simulation and measured data analysis that the proposed algorithm has improved the performance of radar multi-target tracking to a certain extent. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
5. SAR ATR Based on Convolutional Neural Network
- Author
-
Tian Zhuangzhuang, Zhan Ronghui, Hu Jiemin, and Zhang Jun
- Subjects
Synthetic Aperture Radar (SAR) ,Automatic Target Recognition (ATR) ,Convolutional Neural Network (CNN) ,Support Vector Machine (SVM) ,Back Propagation (BP) ,Electricity and magnetism ,QC501-766 - Abstract
This study presents a new method of Synthetic Aperture Radar (SAR) image target recognition based on a convolutional neural network. First, we introduce a class separability measure into the cost function to improve this network’s ability to distinguish between categories. Then, we extract SAR image features using the improved convolutional neural network and classify these features using a support vector machine. Experimental results using moving and stationary target acquisition and recognition SAR datasets prove the validity of this method.
- Published
- 2016
- Full Text
- View/download PDF
6. An Improved Backward Smoothing Method Based on Label Iterative Processing.
- Author
-
Zhao, Jiuchao, Zhan, Ronghui, Zhuang, Zhaowen, Li, Kun, Deng, Bing, and Peng, Huafeng
- Subjects
- *
RADAR targets , *TRACKING radar , *RADAR , *ITERATIVE learning control , *RANDOM sets - Abstract
Effective target detection and tracking has always been a research hotspot in the field of radar, and multi-target tracking is the focus of radar target tracking at present. In order to effectively deal with the issue of outlier removal and track initiation determination in the process of multi-target tracking, this paper proposes an improved backward smoothing method based on label iterative processing. This method corrects the loophole in the original backward smoothing method, which can cause estimated target values to be erroneously removed due to missing detection, so that it correctly removes outliers in target tracking. In addition, the proposed method also combines label iterative processing with track initiation determination to effectively eliminate invalid target short-lived tracks. The results of simulation experiments and actual data verification showed that the proposed method correctly removed outliers and invalid short-lived tracks. Compared with the original method, it improved the accuracy of target cardinality estimation and tracking performance to a certain extent. Moreover, without affecting the algorithm performance, the method's processing efficiency could be improved by increasing the track pruning threshold. Finally, the proposed method was compared with existing methods, verifying that its tracking performance was better than that of existing methods. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
7. Flood Detection in Dual-Polarization SAR Images Based on Multi-Scale Deeplab Model.
- Author
-
Wu, Han, Song, Huina, Huang, Jianhua, Zhong, Hua, Zhan, Ronghui, Teng, Xuyang, Qiu, Zhaoyang, He, Meilin, and Cao, Jiayi
- Subjects
DEEP learning ,MULTISCALE modeling ,SYNTHETIC aperture radar ,WATER boundaries ,FLOODS ,IMAGE analysis ,FEATURE extraction - Abstract
The proliferation of massive polarimetric Synthetic Aperture Radar (SAR) data helps promote the development of SAR image interpretation. Due to the advantages of powerful feature extraction capability and strong adaptability for different tasks, deep learning has been adopted in the work of SAR image interpretation and has achieved good results. However, most deep learning methods only employ single-polarization SAR images and ignore the water features embedded in multi-polarization SAR images. To fully exploit the dual-polarization SAR data and multi-scale features of SAR images, an effective flood detection method for SAR images is proposed in this paper. In the proposed flood detection method, a powerful Multi-Scale Deeplab (MS-Deeplab) model is constructed based on the dual-channel MobileNetV2 backbone and the classic DeeplabV3+ architecture to improve the ability of water feature extraction in SAR images. Firstly, the dual-channel feature extraction backbone based on the lightweight MobileNetV2 separately trains the dual-polarization SAR images, and the obtained training parameters are merged with the linear weighting to fuse dual-polarization water features. Given the multi-scale space information in SAR images, then, a multi-scale feature fusion module is introduced to effectively utilize multi-layer features and contextual information, which enhances the representation of water features. Finally, a joint loss function is constructed based on cross-entropy and a dice coefficient to deal with the imbalanced categorical distribution in the training dataset. The experimental results on the time series of Sentinel-1A SAR images show that the proposed method for flood detection has a strong ability to locate water boundaries and tiny water bodies in complex scenes. In terms of quantitative assessment, MS-Deeplab can achieve a better performance compared with other mainstream semantic segmentation models, including PSPNet, Unet and the original DeeplabV3+ model, with a 3.27% intersection over union (IoU) and 1.69% pixel accuracy (PA) improvement than the original DeeplabV3+ model. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
8. LMSD-YOLO: A Lightweight YOLO Algorithm for Multi-Scale SAR Ship Detection.
- Author
-
Guo, Yue, Chen, Shiqi, Zhan, Ronghui, Wang, Wei, and Zhang, Jun
- Subjects
ALGORITHMS ,FEATURE extraction ,NAVAL architecture ,DEEP learning ,MOBILE operating systems ,SHIPS ,SYNTHETIC aperture radar - Abstract
At present, deep learning has been widely used in SAR ship target detection, but the accurate and real-time detection of multi-scale targets still faces tough challenges. CNN-based SAR ship detectors are challenged to meet real-time requirements because of a large number of parameters. In this paper, we propose a lightweight, single-stage SAR ship target detection model called YOLO-based lightweight multi-scale ship detector (LMSD-YOLO), with better multi-scale adaptation capabilities. The proposed LMSD-YOLO consists of depthwise separable convolution, batch normalization and activate or not (ACON) activation function (DBA) module, Mobilenet with stem block (S-Mobilenet) backbone module, depthwise adaptively spatial feature fusion (DSASFF) neck module and SCYLLA-IoU (SIoU) loss function. Firstly, the DBA module is proposed as a general lightweight convolution unit to construct the whole lightweight model. Secondly, the improved S-Mobilenet module is designed as the backbone feature extraction network to enhance feature extraction ability without adding additional calculations. Then, the DSASFF module is proposed to achieve adaptive fusion of multi-scale features with fewer parameters. Finally, the SIoU is used as the loss function to accelerate model convergence and improve detection accuracy. The effectiveness of the LMSD-YOLO is validated on the SSDD, HRSID and GFSDD datasets, respectively, and the experimental results show that our proposed model has a smaller model volume and higher detection accuracy, and can accurately detect multi-scale targets in more complex scenes. The model volume of LMSD-YOLO is only 7.6MB (52.77% of model size of YOLOv5s), the detection speed on the NVIDIA AGX Xavier development board reached 68.3 FPS (32.7 FPS higher than YOLOv5s detector), indicating that the LMSD-YOLO can be easily deployed to the mobile platform for real-time application. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
9. Hierarchical Superpixel Segmentation for PolSAR Images Based on the Boruvka Algorithm.
- Author
-
Deng, Jie, Wang, Wei, Quan, Sinong, Zhan, Ronghui, and Zhang, Jun
- Subjects
POLARIMETRY ,SYNTHETIC aperture radar ,IMAGE segmentation ,PIXELS ,SYNTHETIC apertures ,SPANNING trees ,ALGORITHMS - Abstract
Superpixel segmentation for polarimetric synthetic aperture radar (PolSAR) images plays a key role in remote-sensing tasks, such as ship detection and land-cover classification. However, the existing methods cannot directly generate multi-scale superpixels in a hierarchical style and they will take a long time when multi-scale segmentation is executed separately. In this article, we propose an effective and accurate hierarchical superpixel segmentation method, by introducing a minimum spanning tree (MST) algorithm called the Boruvka algorithm. To accurately measure the difference between neighboring pixels, we obtain the scattering mechanism information derived from the model-based refined 5-component decomposition (RFCD) and construct a comprehensive dissimilarity measure. In addition, the edge strength map and homogeneity measurement are considered to make use of the structural and spatial distribution information in the PolSAR image. On this basis, we can generate superpixels using the distance metric along with the MST framework. The proposed method can maintain good segmentation accuracy at multiple scales, and it generates superpixels in real time. According to the experimental results on the ESAR and AIRSAR datasets, our method is faster than the current state-of-the-art algorithms and preserves somewhat more image details in different segmentation scales. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
10. Gaussian low‐pass channel attention convolution network for RF fingerprinting.
- Author
-
Zhang, Shunjie, Wu, Tianhao, Wang, Wei, Zhan, Ronghui, and Zhang, Jun
- Subjects
GAUSSIAN channels ,CONVOLUTIONAL neural networks ,DEEP learning ,RADIO frequency ,CONVOLUTION codes ,HUMAN fingerprints - Abstract
Radio frequency (RF) fingerprinting is a challenging and important technique for individual identification of wireless devices. Recent work has applied deep learning‐based classifiers to ADS‐B signals without missing aircraft ID information. However, traditional methods are not very effective in achieving high accuracy for deep learning models to recognize RF signals. In this letter, a Gaussian low‐pass channel attention convolution network, which uses a Gaussian low‐pass channel attention module (GLCAM) to extract fingerprint features with low frequency. Specifically, in GLCAM, a frequency‐convolutional global average pooling module is designed to help the channel attention mechanism learn channel weights in the frequency domain. Experimental results on large‐scale real‐world ADS‐B signal datasets show that the method can achieve an accuracy of 92.08%, which is 6.21% higher than convolutional neural networks. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
11. Few Shot Object Detection for SAR Images via Feature Enhancement and Dynamic Relationship Modeling.
- Author
-
Chen, Shiqi, Zhang, Jun, Zhan, Ronghui, Zhu, Rongqiang, and Wang, Wei
- Subjects
SYNTHETIC aperture radar ,DYNAMIC models - Abstract
Current Synthetic Aperture Radar (SAR) image object detection methods require huge amounts of annotated data and can only detect the categories that appears in the training set. Due to the lack of training samples in the real applications, the performance decreases sharply on rare categories, which largely inhibits the detection model from reaching robustness. To tackle this problem, a novel few-shot SAR object detection framework is proposed, which is built upon the meta-learning architecture and aims at detecting objects of unseen classes given only a few annotated examples. Observing the quality of support features determines the performance of the few-shot object detection task, we propose an attention mechanism to highlight class-specific features while softening the irrelevant background information. Considering the variation between different support images, we also employ a support-guided module to enhance query features, thus generating high-qualified proposals more relevant to support images. To further exploit the relevance between support and query images, which is ignored in single class representation, a dynamic relationship learning paradigm is designed via constructing a graph convolutional network and imposing orthogonality constraint in hidden feature space, which both make features from the same category more closer and those from different classes more separable. Comprehensive experiments have been completed on the self-constructed SAR multi-class object detection dataset, which demonstrate the effectiveness of our few-shot object detection framework in learning more generalized features to both enhance the performance on novel classes and maintain the performance on base classes. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
12. Posterior Cramér-Rao bounds analysis for passive target tracking
- Author
-
Zhang Jun and Zhan Ronghui
- Published
- 2008
- Full Text
- View/download PDF
13. Iterated unscented Kalman filter for passive target tracking
- Author
-
Zhan, Ronghui and Wan, Jianwei
- Subjects
Algorithms -- Evaluation ,Kalman filtering -- Research ,Tracking systems -- Design and construction ,Numerical analysis -- Methods ,Algorithm ,Aerospace and defense industries ,Business ,Computers ,Electronics ,Electronics and electrical industries - Abstract
It is of great importance to develop a robust and fast tracking algorithm in passive localization and tracking system because of its inherent disadvantages such as weak observability and large initial errors. In this correspondence, a new algorithm referred to as the iterated unscented Kalman filter (IUKF) is proposed based on the analysis and comparison of conventional nonlinear tracking problem. The algorithm is developed from UKF but it can obtain more accurate state and covariance estimation. Compared with the traditional approaches (e.g., extended Kalman filter (EKF) and UKF) used in passive localization, the proposed method has potential advantages in robustness, convergence speed, and tracking accuracy. The correctness as well as validity of the algorithm is demonstrated through numerical simulation and experiment results.
- Published
- 2007
14. LFNet: Local Rotation Invariant Coordinate Frame for Robust Point Cloud Analysis.
- Author
-
Cao, Hezhi, Zhan, Ronghui, Ma, Yanxin, Ma, Chao, and Zhang, Jun
- Subjects
POINT cloud ,ROTATIONAL motion ,MATHEMATICAL analysis - Abstract
Deep neural networks have achieved great progress in 3D scene understanding. However, recent methods mainly focused on objects with canonical orientations in contrast with random postures in reality. In this letter, we propose a hierarchical neural network, named Local Frame Network (LFNet), based on the local rotation invariant coordinate frame for robust point cloud analysis. The local point patches in different orientated objects are transformed into an identical distribution based on this coordinate frame, and the transformed coordinates are taken as input features to eliminate the influence of rotations at the input level. Meanwhile, a discrete convolution operator is defined in the constructed coordinate frame to extract rotation invariant features from local patches, which can further remove the influence of rotations at the convolution level. Moreover, a Spatial Feature Encoder (SFE) module is utilized to perceive the spatial structure of the local region. Mathematical analysis and experimental results on two public datasets demonstrate that the proposed method can eliminate the influence of rotations without data augmentation and outperforms other state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
15. Object detection in optical remote sensing images by integrating object-to-object relationships.
- Author
-
Tian, Zhuangzhuang, Zhan, Ronghui, Wang, Wei, He, Zhiqiang, Zhang, Jun, and Zhuang, Zhaowen
- Subjects
- *
OPTICAL remote sensing , *IMAGE analysis , *REMOTE sensing , *MACHINE learning - Abstract
In recent years, deep-learning-based methods for remote sensing image interpretation have undergone rapid development, due to the increasing amount of image data and the advanced techniques of machine learning. The abundant spatial and contextual information within the images is helpful to improve the interpretation performance. However, the contextual information is ignored by most of the current deep-learning-based methods. In this letter, we explore the contextual information by taking advantage of the object-to-object relationship. Then, the feature representation of the individual objects can be enhanced. To be specific, we first build a knowledge database which reveals the relationship between different categories and generate a region-to-region graph that indicates the relationship between different regions of interest (RoIs). For each RoI, the features of its related regions are then combined with the original region features, and the fused features are finally used for object detection. The experiments conducted on a public ten-class object detection dataset demonstrate the validity of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
16. Processing Technology Based on Radar Signal Design and Classification.
- Author
-
Ou, Jianping, Zhang, Jun, and Zhan, Ronghui
- Subjects
SIGNAL classification ,RADAR signal processing ,ADAPTIVE signal processing ,RADAR ,TECHNOLOGICAL progress ,SIGNAL filtering - Abstract
It is well known that the application of radar is becoming more and more popular with the development of the signal technology progress. This paper lists the current radar signal research, the technical progress achieved, and the existing limitations. According to radar signal respective characteristics, the design and classification of the radar signal are introduced to reflect signal's differences and advantages. The multidisciplinary processing technology of the radar signal is classified and compared in details referring to adaptive radar signal process, pulse signal management, digital filtering signal mode, and Doppler method. The transmission process of radar signal is summarized, including the transmission steps of radar signal, the factors affecting radar signal transmission, and radar information screening. The design method of radar signal and the corresponding signal characteristics are compared in terms of performance improvement. Radar signal classification method and related influencing factors are also contrasted and narrated. Radar signal processing technology is described in detail including multidisciplinary technology synthesis. Adaptive radar signal process, pulse compression management, and digital filtering Doppler method are very effective technical means, which has its own unique advantages. At last, the future research trends and challenges of technologies of the radar signals are proposed. The conclusions obtained are beneficial to promote the further promotion applications both in theory and practice. The study work of this paper will be useful for choosing more reasonable radar signal processing technology methods. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
17. Knowledge-Aided 2-D Autofocus for Spotlight SAR Filtered Backprojection Imagery.
- Author
-
Mao, Xinhua, Ding, Lan, Zhang, Yudong, Zhan, Ronghui, and Li, Shan
- Subjects
SYNTHETIC aperture radar ,PARAMETER estimation ,IMAGE processing ,RADAR antennas - Abstract
The filtered backprojection (FBP) algorithm is a popular choice for complicated trajectory synthetic aperture radar (SAR) image formation processing due to its inherent nonlinear motion compensation capability. However, how to efficiently refocus the defocused FBP imagery when the motion measurement is not accurate enough is still a challenging problem. In this paper, a new interpretation of the FBP derivation is presented from the Fourier transform point of view. Based on this new viewpoint, the property of the residual 2-D phase error in FBP imagery is analyzed in detail. Then, by incorporating the derived a priori knowledge on the 2-D phase error, an accurate and efficient 2-D autofocus approach is proposed. This new approach performs the parameter estimation in a dimension-reduced parameter subspace by exploiting the a priori analytical structure of the 2-D phase error, therefore it possesses much higher accuracy and efficiency than the conventional blind methods. Finally, experimental results clearly demonstrate the effectiveness and robustness of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
18. Cascaded Detection Framework Based on a Novel Backbone Network and Feature Fusion.
- Author
-
Tian, Zhuangzhuang, Wang, Wei, Zhan, Ronghui, He, Zhiqiang, Zhang, Jun, and Zhuang, Zhaowen
- Abstract
Due to the ability of powerful feature representation, deep-learning-based object detection has attracted considerable research attention, and many methods have been proposed for remote sensing images. However, there are still some problems that need to be addressed. In this paper, a novel and effective detection framework based on faster region-based convolutional neural network is designed. Specifically, first, in order to locate the boundaries of large objects and find the missing small objects, DetNet is incorporated into the detection framework as the backbone network. DetNet fixes the spatial resolution in deep layers and adopts dilated bottleneck with convolution projection to increase the divergence between input and output feature maps. Then, the proposed framework uses the backbone network to extract the scene features and region features simultaneously, which are both mapped to feature vectors and then fused together. The feature fusion operation can improve the feature representation of the generated region. Last, to improve the performance of localization, the cascade structure is adopted in the framework. The cascade structure has multiple phases and every phase has independent classifier and regressor. The results obtained from the previous phase are used as the regions of interest in the next phase. Therefore, the multiphase detector can increase the detection accuracy phase by phase. Comprehensive evaluations on a public ten-class object detection dataset demonstrate the effectiveness of the proposed framework. Moreover, ablation experiments are also implemented to show the respective influence of different parts of the framework on the performance improvement. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
19. Classification via weighted kernel CNN: application to SAR target recognition.
- Author
-
Tian, Zhuangzhuang, Wang, Liping, Zhan, Ronghui, Hu, Jiemin, and Zhang, Jun
- Subjects
SYNTHETIC aperture radar ,FEATURE extraction ,IMAGE processing ,KERNEL (Mathematics) - Abstract
The conventional convolutional neural network (CNN) has proven to be effective for synthetic aperture radar (SAR) target recognition. However, the relationship between different convolutional kernels is not taken into account. The lack of the relationship limits the feature extraction capability of the convolutional layer to a certain extent. To address this problem, this paper presents a novel method named weighted kernel CNN (WKCNN). WKCNN integrates a weighted kernel module (WKM) into the common CNN architecture. The WKM is proposed to model the interdependence between different kernels, and thus to improve the feature extraction capability of the convolutional layer. The WKM consists of variables and activations. The variable represents the weight of the convolutional kernel. The activation is a mapping function which is used to determine the range of the weight. To adjust the variable adaptively, back propagation (BP) algorithm for the WKM is derived. The training of the WKM is driven by optimizing the cost function according to the BP algorithm, and three training modes are presented and analysed. SAR target recognition experiments are conducted on the moving and stationary target acquisition and recognition (MSTAR) dataset, and the results show the superiority of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
20. Global Scattering Center Extraction for Radar Targets Using a Modified RANSAC Method.
- Author
-
Hu, Jiemin, Wang, Wei, Zhai, Qinglin, Ou, Jianping, Zhan, Ronghui, and Zhang, Jun
- Subjects
ELECTROMAGNETIC wave scattering ,RADAR cross sections ,SIGNAL-to-noise ratio ,HIGH resolution imaging ,OBJECT recognition (Computer vision) - Abstract
In the optical region, the global scattering center (SC) model is important for target recognition and data compression. However, the existing methods are difficult to be accomplished because of the requirement for large storage or time consumption. To solve this problem, a new easy-to-implement method is proposed in this paper. By employing a modified random sample consensus method, all candidate positions for the global SC model are extracted and discriminated efficiently. The clean step is unnecessary in the proposed method, which makes the procedure more efficient. Experimental results on the high-frequency-electromagnetic data demonstrate the effectiveness of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
21. Multi-view radar target recognition based on multitask compressive sensing.
- Author
-
Liu, Shengqi, Zhan, Ronghui, Zhai, Qinglin, Wang, Wei, and Zhang, Jun
- Subjects
- *
RADAR , *PATTERN recognition systems , *COMPRESSED sensing , *ERROR analysis in mathematics , *COMPARATIVE studies - Abstract
A novel multitask compressive sensing (MtCS)-based method for multi-view radar automatic target recognition is presented in the paper. The sparse representation vectors recovered jointly via MtCS are used as recognition features, and classification is performed according to minimum reconstruction error criterion. Compared to the conventional methods, the proposed method has a significant advantage of exploiting the statistical correlation among multiple views for target recognition. Experiments were conducted using a synthetic vehicle target data-set and the moving and stationary target acquisition and recognition database. The results show that the proposed method achieves promising recognition accuracy, and is robust with respect to noisy observations and complex target types. [ABSTRACT FROM PUBLISHER]
- Published
- 2015
- Full Text
- View/download PDF
22. Maneuvering Targets Track-Before-Detect Using Multiple-Model Multi-Bernoulli Filtering.
- Author
-
Zhan, Ronghui, Lu, Dawei, and Zhang, Jun
- Abstract
Target tracking using unthresholded raw data under low signal-to-noise ratio circumstance, also referred to as track-before-detect, is a challenging task, especially for the case with varying target number and uncertain target dynamics. This paper deals with the problem of tracking multiple maneuvering targets using raw image observation. The multi-target state is formulated as random finite set and its posterior distribution is approximated by multi-Bernoulli parameters. Multiple model approach is proposed to accommodate the uncertainty of the possible target dynamics, and sequential Monte Carlo method is presented to implement the multiple-model multi-Bernoulli (MM-MeMBer) filter. The state estimates are obtained by combining the result of mode-dependent filtering for the Bernoulli components with high existence probabilities. Simulation results for multi-target track-before-detect application show the improved performance of the proposed method over MeMBer filters in the single-model fashion under the condition of equivalent computational complexity. [ABSTRACT FROM PUBLISHER]
- Published
- 2013
- Full Text
- View/download PDF
23. High squint mode SAR imaging using modified RD algorithm.
- Author
-
Wang, Wei, Wu, Weihua, Su, Wuge, Zhan, Ronghui, and Zhang, Jun
- Published
- 2013
- Full Text
- View/download PDF
24. Improved multitarget track-before-detect for image measurements.
- Author
-
Zhan, Ronghui and Zhang, Jun
- Abstract
Track of weak targets with unknown and time varying number is an important and difficult issue. In the paper, an improved multitarget track-before-detect (TBD) method for image measurements is proposed to tackle this problem. The method is developed in the framework of probability hypothesis density (PHD) filtering by utilizing the independent measurements from multiple homogeneous sensors. To fast implement the PHD based method using particle filtering technique, an efficient implementation approach is also presented by partitioning the particles into multiple subsets. Simulation results show the improved performance of the proposed method for multitarget TBD at low signal-to-noise ratio (SNR) condition. [ABSTRACT FROM PUBLISHER]
- Published
- 2012
- Full Text
- View/download PDF
25. Generating Anchor Boxes Based on Attention Mechanism for Object Detection in Remote Sensing Images.
- Author
-
Tian, Zhuangzhuang, Zhan, Ronghui, Hu, Jiemin, Wang, Wei, He, Zhiqiang, and Zhuang, Zhaowen
- Subjects
- *
REMOTE sensing , *OPTICAL remote sensing , *CONVOLUTIONAL neural networks , *BOXES , *BOXING , *ANCHORS - Abstract
Nowadays, object detection methods based on deep learning are applied more and more to the interpretation of optical remote sensing images. However, the complex background and the wide range of object sizes in remote sensing images increase the difficulty of object detection. In this paper, we improve the detection performance by combining the attention information, and generate adaptive anchor boxes based on the attention map. Specifically, the attention mechanism is introduced into the proposed method to enhance the features of the object regions while reducing the influence of the background. The generated attention map is then used to obtain diverse and adaptable anchor boxes using the guided anchoring method. The generated anchor boxes can match better with the scene and the objects, compared with the traditional proposal boxes. Finally, the modulated feature adaptation module is applied to transform the feature maps to adapt to the diverse anchor boxes. Comprehensive evaluations on the DIOR dataset demonstrate the superiority of the proposed method over the state-of-the-art methods, such as RetinaNet, FCOS and CornerNet. The mean average precision of the proposed method is 4.5% higher than the feature pyramid network. In addition, the ablation experiments are also implemented to further analyze the respective influence of different blocks on the performance improvement. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
26. R2FA-Det: Delving into High-Quality Rotatable Boxes for Ship Detection in SAR Images.
- Author
-
Chen, Shiqi, Zhang, Jun, and Zhan, Ronghui
- Subjects
CONVOLUTIONAL neural networks ,SYNTHETIC aperture radar ,RADARSAT satellites ,SHIPS ,BOXES ,ALGORITHMS ,CONTAINER ships - Abstract
Recently, convolutional neural network (CNN)-based methods have been extensively explored for ship detection in synthetic aperture radar (SAR) images due to their powerful feature representation abilities. However, there are still several obstacles hindering the development. First, ships appear in various scenarios, which makes it difficult to exclude the disruption of the cluttered background. Second, it becomes more complicated to precisely locate the targets with large aspect ratios, arbitrary orientations and dense distributions. Third, the trade-off between accurate localization and improved detection efficiency needs to be considered. To address these issues, this paper presents a rotate refined feature alignment detector (R 2 FA-Det), which ingeniously balances the quality of bounding box prediction and the high speed of the single-stage framework. Specifically, first, we devise a lightweight non-local attention module and embed it into the stem network. The recalibration of features not only strengthens the object-related features yet adequately suppresses the background interference. In addition, both forms of anchors are integrated into our modified anchor mechanism and thus can enable better representation of densely arranged targets with less computation burden. Furthermore, considering the shortcoming of the feature misalignment existing in the cascaded refinement scheme, a feature-guided alignment module which encodes both the position and shape information of current refined anchors into the feature points is adopted. Extensive experimental validations on two SAR ship datasets are performed and the results demonstrate that our algorithm has higher accuracy with faster speed than some state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
27. Joint Tracking and Classification of Multiple Targets with Scattering Center Model and CBMeMBer Filter †.
- Author
-
Zhan, Ronghui, Wang, Liping, and Zhang, Jun
- Subjects
- *
MONTE Carlo method , *MULTIPLE target tracking , *MARITIME shipping , *FILTERS & filtration - Abstract
This paper deals with joint tracking and classification (JTC) of multiple targets based on scattering center model (SCM) and wideband radar observations. We first introduce an SCM-based JTC method, where the SCM is used to generate the predicted high range resolution profile (HRRP) with the information of the target aspect angle, and target classification is implemented through the data correlation of observed HRRP with predicted HRRPs. To solve the problem of multi-target JTC in the presence of clutter and detection uncertainty, we then integrate the SCM-based JTC method into the CBMeMBer filter framework, and derive a novel SCM-JTC-CBMeMBer filter with Bayesian theory. To further tackle the complex integrals' calculation involved in targets state and class estimation, we finally provide the sequential Monte Carlo (SMC) implementation of the proposed SCM-JTC-CBMeMBer filter. The effectiveness of the presented multi-target JTC method is validated by simulation results under the application scenario of maritime ship surveillance. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
28. Geospatial Object Detection in Remote Sensing Imagery Based on Multiscale Single-Shot Detector with Activated Semantics.
- Author
-
Chen, Shiqi, Zhan, Ronghui, and Zhang, Jun
- Subjects
- *
SEMANTICS , *REMOTE sensing , *GEOSPATIAL data , *IMAGE segmentation , *ARTIFICIAL neural networks - Abstract
Geospatial object detection from high spatial resolution (HSR) remote sensing imagery is a heated and challenging problem in the field of automatic image interpretation. Despite convolutional neural networks (CNNs) having facilitated the development in this domain, the computation efficiency under real-time application and the accurate positioning on relatively small objects in HSR images are two noticeable obstacles which have largely restricted the performance of detection methods. To tackle the above issues, we first introduce semantic segmentation-aware CNN features to activate the detection feature maps from the lowest level layer. In conjunction with this segmentation branch, another module which consists of several global activation blocks is proposed to enrich the semantic information of feature maps from higher level layers. Then, these two parts are integrated and deployed into the original single shot detection framework. Finally, we use the modified multi-scale feature maps with enriched semantics and multi-task training strategy to achieve end-to-end detection with high efficiency. Extensive experiments and comprehensive evaluations on a publicly available 10-class object detection dataset have demonstrated the superiority of the presented method. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.