Authors
Yutian Pang, Sheng Cheng, Jueming Hu, Yongming Liu
Publication date
2022/4/5
Conference
2022 Integrated Communication, Navigation and Surveillance Conference (ICNS)
Pages
1-8
Publisher
IEEE
Description
Image-based object detection and classification are essential for satellite-based monitoring, which spans multiple safety-critical engineering applications. Meanwhile, state-of-the-art deep learning significant improves the accuracy for image classification tasks thus has been deployed in various scenarios. However, it’s well-known deep learning-based image classifiers are vulnerable to small perturbations along specific directions, known as adversarial attacks. These attacks are exceptionally effective to fool image classifiers. In extreme cases, merely one pixel’s change can lead to a attacker-desired wrong prediction label. In this work, we show that deep learning with Bayesian formulation can extend the deep learning adversarial robustness by a large margin, without the need of adversarial training. Moreover, we show that the stochastic classifier after the deterministic CNN extractor has sufficient robustness …
Total citations
2022202323
Scholar articles
Y Pang, S Cheng, J Hu, Y Liu - 2022 Integrated Communication, Navigation and …, 2022