8 results on '"Changjie, Cao"'
Search Results
2. Cost-Sensitive Awareness-Based SAR Automatic Target Recognition for Imbalanced Data
- Author
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Jianyu Yang, Liying Wang, Jielei Wang, Zongjie Cao, Zongyong Cui, and Changjie Cao
- Subjects
Synthetic aperture radar ,business.industry ,Computer science ,Cost sensitive ,Pattern recognition ,Imbalanced data ,Target acquisition ,Data set ,Automatic target recognition ,General Earth and Planetary Sciences ,Learning methods ,Oversampling ,Artificial intelligence ,Electrical and Electronic Engineering ,business - Abstract
With the maturity of synthetic aperture radar (SAR) technology, the problem of imbalanced data has gradually emerged. This problem makes it difficult for the automatic target recognition (ATR) model to properly learn the classification boundaries of majority and minority category target samples. In this article, we propose an ATR model with new architecture, called the cost-sensitive awareness-based automatic target recognition (CA-ATR) model, which provides an effective way of solving the problem of imbalanced data. Aimed at the two issues caused by imbalanced data on ATR models, the proposed method solves the problems from both the data and algorithm levels. At the data level, CA-ATR avoids adverse correlations among the target samples through different oversampling methods. By making the ATR model cost-sensitive, the proposed method also avoids the empirical risk preference of the ATR model for majority category target samples at the algorithm-level. At the same time, CA-ATR can autonomously learn different cost-sensitive awareness from different imbalanced data sets. The awareness enables the ATR model to more accurately learn the classification boundaries between target samples that belong in different categories. Several experimental results show the superiority of the proposed approach based on the Moving and Stationary Target Acquisition and Recognition (MSTAR) data set. Compared with other imbalanced learning methods, the proposed method is able to solve different types of imbalanced data problems.
- Published
- 2022
- Full Text
- View/download PDF
3. LDGAN: A Synthetic Aperture Radar Image Generation Method for Automatic Target Recognition
- Author
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Changjie Cao, Zongyong Cui, and Zongjie Cao
- Subjects
Synthetic aperture radar ,Computer science ,business.industry ,Supervised learning ,0211 other engineering and technologies ,Pattern recognition ,02 engineering and technology ,Function (mathematics) ,Real image ,Image (mathematics) ,Automatic target recognition ,General Earth and Planetary Sciences ,Artificial intelligence ,Electrical and Electronic Engineering ,business ,Independence (probability theory) ,021101 geological & geomatics engineering - Abstract
Under the framework of a supervised learning-based automatic target recognition (ATR) approach, recognition performance is primarily dependent on the amount of training samples. However, shortage in training samples is a consistent issue for ATR. In this article, we propose a new image to image generation method, called label-directed generative adversarial networks (LDGANs), which will provide labeled samples to be used for recognition model training. We define an entirely new loss function for the LDGAN, which utilizes the Wasserstein distance to replace the original distance measurement of the conventional generative adversarial networks (GANs), thus efficiently avoiding the collapse mode problem. The label information is also added to the loss function of the LDGAN to avoid generating a large number of unlabeled target images. More importantly, the proposed method also makes corresponding changes to the network architecture regarding the new GANs. At the same time, the detailed algorithm about the LDGAN is also introduced in this article to deal with the issue that characteristically GANs are not easy to train. Based on comparisons with other directed generation methods, the experimental results show comparative results of several types of generated images in statistical features, gradient features, classic features of synthetic aperture radar (SAR) targets and the independence from the real image. While demonstrating that the images generated by the LDGAN produced better results using the assumptions of independent and identical distribution, the experiment also explores the performance of the generated image in the ATR. A comparison of these experimental results demonstrates a better way to use the generated image for ATR. The experimental results also prove that the proposed method does have the ability to supplement information for ATR when the training sample information is insufficient.
- Published
- 2020
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4. An Integrated Counterfactual Sample Generation and Filtering Approach for SAR Automatic Target Recognition with a Small Sample Set
- Author
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Changjie Cao, Jianyu Yang, Liying Wang, Zongyong Cui, and Zongjie Cao
- Subjects
Synthetic aperture radar ,business.industry ,Computer science ,Science ,Pattern recognition ,Sample (statistics) ,Overfitting ,synthetic aperture radar (SAR) ,counterfactual sample ,automatic target recognition (ATR) ,generative adversarial nets (GANs) ,small sample set ,Target acquisition ,Set (abstract data type) ,Support vector machine ,Automatic target recognition ,Component (UML) ,General Earth and Planetary Sciences ,Artificial intelligence ,business - Abstract
Although automatic target recognition (ATR) models based on data-driven algorithms have achieved excellent performance in recent years, the synthetic aperture radar (SAR) ATR model often suffered from performance degradation when it encountered a small sample set. In this paper, an integrated counterfactual sample generation and filtering approach is proposed to alleviate the negative influence of a small sample set. The proposed method consists of a generation component and a filtering component. First, the proposed generation component utilizes the overfitting characteristics of generative adversarial networks (GANs), which ensures the generation of counterfactual target samples. Second, the proposed filtering component is built by learning different recognition functions. In the proposed filtering component, multiple SVMs trained by different SAR target sample sets provide pseudo-labels to the other SVMs to improve the recognition rate. Then, the proposed approach improves the performance of the recognition model dynamically while it continuously generates counterfactual target samples. At the same time, counterfactual target samples that are beneficial to the ATR model are also filtered. Moreover, ablation experiments demonstrate the effectiveness of the various components of the proposed method. Experimental results based on the Moving and Stationary Target Acquisition and Recognition (MSTAR) and OpenSARship dataset also show the advantages of the proposed approach. Even though the size of the constructed training set was 14.5% of the original training set, the recognition performance of the ATR model reached 91.27% with the proposed approach.
- Published
- 2021
5. A Filtering Approach for Generated Samples by GANS in SAR ATR
- Author
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Jianyu Yang, Changjie Cao, Liying Wang, Jielei Wang, Zongyong Cui, and Zongjie Cao
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Set (abstract data type) ,Data set ,Synthetic aperture radar ,Support vector machine ,Automatic target recognition ,Computer science ,business.industry ,Small sample ,Sample (statistics) ,Pattern recognition ,Artificial intelligence ,business ,Target acquisition - Abstract
The rapid development of generative adversarial nets (GANs) has led to an increasing number of applications for the synthetic aperture radar (SAR) automatic target recognition (A-TR) with a small sample set in the past few years. However, the generated samples by the GAN s sometimes even lead to a decrease in the performance of the ATR model. In this paper, we propose a filtering approach to address this harm of generated samples. The proposed filtering approach is based on a stable generation model. The stable generation model can continuously and stably generate different batches of target samples. Then, multiple SVMs trained by different SAR target sample sets provide pseudo-labels to the other SVMs to improve the accuracy of the filtering results. Therefore, the proposed approach improves the recognition ability of the A-TR model dynamically while continuously filtering generated target samples. Several experimental results show the superiority of the proposed filtering approach based on the Moving and Stationary Target Acquisition and Recognition (MSTAR) data set. When the number of training samples is 14.5% of the original training set, the recognition rate of the ATR model still reaches 91.27% with the help of the proposed approach.
- Published
- 2021
- Full Text
- View/download PDF
6. An IQE Criterion-Based Method for SAR Images Classification Network Pruning
- Author
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Hanzeng Wang, Jielei Wang, Zongjie Cao, Changjie Cao, and Zongyong Cui
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Artificial neural network ,business.industry ,Image quality ,Computer science ,Deep neural networks ,Pattern recognition ,Limit (mathematics) ,Artificial intelligence ,business ,Convolutional neural network ,Pruning (morphology) ,Edge computing ,Image (mathematics) - Abstract
Deep convolutional neural networks (DCNNs) have been widely used for SAR image target recognition. However, the huge demands of DCNNs for computing, storage, and energy resources limit their use on edge computing devices. In this article, we propose a method based on image quality evaluation (IQE) criterion to prune deep neural networks. We use IQE criterion to identify unimportant filters, and then remove them, to obtain a lightweight network while maintaining the performance of the neural network as much as possible. Besides, we verified the effectiveness of our method on the MSTAR dataset with cheap edge computing devices.
- Published
- 2021
- Full Text
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7. A Terahertz Radar Feature Set for Device-Free Gesture Recognition
- Author
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Liying Wang, Changjie Cao, Zongyong Cui, Zongjie Cao, and Yiming Pi
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Radar tracker ,Terahertz radiation ,business.industry ,Computer science ,010401 analytical chemistry ,Feature extraction ,020206 networking & telecommunications ,Pattern recognition ,02 engineering and technology ,ENCODE ,01 natural sciences ,0104 chemical sciences ,law.invention ,Set (abstract data type) ,law ,Gesture recognition ,0202 electrical engineering, electronic engineering, information engineering ,Artificial intelligence ,Radar ,business ,Gesture - Abstract
This paper proposes a set of simple but effective features using a terahertz radar, specifically for device-free gesture recognition based on high resolution range profiles. Three types with seven features are extracted, including the tracking features, directional features, and behavioural features. The proposed method is evaluated on a dataset based on 0.34 THz radar, which contains 10 kinds of 5 pairs of frequently-used gestures. These features are demonstrated to be effective to encode the morphological differences among various gestures and be sensitive to the moving direction in a short period of time. The results show that the proposed method achieves 95.5% accuracy on frame-level gesture recognition.
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- 2021
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8. Image Data Augmentation for SAR Sensor via Generative Adversarial Nets
- Author
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Changjie Cao, Mingrui Zhang, Zongjie Cao, and Zongyong Cui
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Sample selection ,0209 industrial biotechnology ,General Computer Science ,business.industry ,Computer science ,General Engineering ,Synthetic aperture radar ,Pattern recognition ,Sample (statistics) ,02 engineering and technology ,Generative Adversarial Nets ,Image (mathematics) ,small sample recognition ,020901 industrial engineering & automation ,target recognition ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,General Materials Science ,lcsh:Electrical engineering. Electronics. Nuclear engineering ,Artificial intelligence ,business ,lcsh:TK1-9971 ,Randomness ,Generative grammar ,data augmentation - Abstract
As a mission-critical sensor, SAR has been applied in environmental monitoring and battlefield surveillance; moreover, SAR target recognition is one of the most important applications of SAR technology. However, in practical applications, the number of samples available for training is relatively small, so the SAR target recognition can be regarded as a small sample recognition problem. One of the main directions to solve the small sample recognition problem is to realize the data augmentation. Therefore, a SAR image data augmentation method via Generative Adversarial Nets (GAN) is proposed in this paper. The method uses Wasserstein GAN with a gradient penalty (WGAN-GP) to generate new samples based on existing SAR data, which can augment the sample number in training dataset. Meanwhile, the sample selection filters are designed to extract the generated samples with high quality and specific azimuth, which can avoid the randomness of the data augmentation, and improve the quality of the newly generated training samples. The experiments based on MSTAR data show that, for three-class recognition problem, when the training sample is only 108, the proposed method can improve the recognition rate from 79% to 91.6%; and for ten-class recognition problem, when the training sample is only 360, the proposed method can improve the recognition rate from 57.48% to 79.59%. Compared with the traditional data linear generation method, the proposed method shows significant improvement on the quantity and quality of the training samples, and can effectively solve the problem of the small sample recognition.
- Published
- 2019
- Full Text
- View/download PDF
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