With the great capabilities of deep classifiers for radar data processing come the risks of learning dataset-specific features that do not generalize well. In this work, the robustness of two deep convolutional architectures, trained and tested on the same data, is evaluated. When standard training practice is followed, both classifiers exhibit sensitivity to subtle temporal shifts of the input representation, an augmentation that carries minimal semantic content. Furthermore, the models are extremely susceptible to adversarial examples. Both small temporal shifts and adversarial examples are a result of a model overfitting on features that do not generalize well. As a remedy, it is shown that training on adversarial examples and temporally...
Radar-based activity recognition is a problem that has been of great interest due to applications su...
Human Activity Recognition based research has got intensified based on the evolving demand of smart ...
Micro-Doppler signatures contain considerable information about target dynamics. However, the radar ...
With the great capabilities of deep classifiers for radar data processing come the risks of learning...
Deep learning techniques are subject to increasing adoption for a wide range of micro-Doppler applic...
Deep neural networks have become increasingly popular in radar micro-Doppler classification; yet, a ...
Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. T...
Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. Th...
Convolutional neural networks have often been proposed for processing radar Micro-Doppler signatures...
Recently, deep neural networks (DNNs) have been the subject of intense research for the classificati...
International audienceOur work builds temporal deep learning architectures for the classification of...
Human motions give rise to frequency modulations, known as micro-Dopplers, to continuous wave radar ...
In this work, the authors present results for classification of different classes of targets (car, s...
and Conclusion Micro-Doppler signatures take advantage of Doppler information in radar data to crea...
Recent years have witnessed the remarkable success of deep neural network (DNN) models spanning a wi...
Radar-based activity recognition is a problem that has been of great interest due to applications su...
Human Activity Recognition based research has got intensified based on the evolving demand of smart ...
Micro-Doppler signatures contain considerable information about target dynamics. However, the radar ...
With the great capabilities of deep classifiers for radar data processing come the risks of learning...
Deep learning techniques are subject to increasing adoption for a wide range of micro-Doppler applic...
Deep neural networks have become increasingly popular in radar micro-Doppler classification; yet, a ...
Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. T...
Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. Th...
Convolutional neural networks have often been proposed for processing radar Micro-Doppler signatures...
Recently, deep neural networks (DNNs) have been the subject of intense research for the classificati...
International audienceOur work builds temporal deep learning architectures for the classification of...
Human motions give rise to frequency modulations, known as micro-Dopplers, to continuous wave radar ...
In this work, the authors present results for classification of different classes of targets (car, s...
and Conclusion Micro-Doppler signatures take advantage of Doppler information in radar data to crea...
Recent years have witnessed the remarkable success of deep neural network (DNN) models spanning a wi...
Radar-based activity recognition is a problem that has been of great interest due to applications su...
Human Activity Recognition based research has got intensified based on the evolving demand of smart ...
Micro-Doppler signatures contain considerable information about target dynamics. However, the radar ...