攻击光流

Anurag Ranjan, J. Janai, Andreas Geiger, Michael J. Black
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引用次数: 78

摘要

深度神经网络在光流估计问题上达到了最先进的性能。由于光流用于自动驾驶汽车等几个安全关键应用,因此深入了解这些技术的稳健性非常重要。最近的研究表明,对抗性攻击很容易欺骗深度神经网络对对象进行错误分类。然而,光流网络对对抗性攻击的鲁棒性迄今尚未得到研究。在本文中,我们将对抗性补丁攻击扩展到光流网络,并表明这种攻击会损害其性能。我们表明,损坏小于图像尺寸的1%的小块可以显着影响光流估计。我们的攻击导致噪声流估计大大超出了攻击区域,在许多情况下甚至完全消除了场景中物体的运动。虽然使用编码器-解码器架构的网络对这些攻击非常敏感,但我们发现使用空间金字塔架构的网络受影响较小。我们分析了攻击这两种架构的成功和失败,通过可视化它们的特征映射,并将它们与对这些攻击具有鲁棒性的经典光流技术进行比较。我们还通过将打印图案放置在真实场景中来证明这种攻击是可行的。
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Attacking Optical Flow
Deep neural nets achieve state-of-the-art performance on the problem of optical flow estimation. Since optical flow is used in several safety-critical applications like self-driving cars, it is important to gain insights into the robustness of those techniques. Recently, it has been shown that adversarial attacks easily fool deep neural networks to misclassify objects. The robustness of optical flow networks to adversarial attacks, however, has not been studied so far. In this paper, we extend adversarial patch attacks to optical flow networks and show that such attacks can compromise their performance. We show that corrupting a small patch of less than 1% of the image size can significantly affect optical flow estimates. Our attacks lead to noisy flow estimates that extend significantly beyond the region of the attack, in many cases even completely erasing the motion of objects in the scene. While networks using an encoder-decoder architecture are very sensitive to these attacks, we found that networks using a spatial pyramid architecture are less affected. We analyse the success and failure of attacking both architectures by visualizing their feature maps and comparing them to classical optical flow techniques which are robust to these attacks. We also demonstrate that such attacks are practical by placing a printed pattern into real scenes.
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