针对对抗性攻击的稳健轨迹预测

Yulong Cao, Danfei Xu, Xinshuo Weng, Z. Mao, Anima Anandkumar, Chaowei Xiao, M. Pavone
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引用次数: 12

摘要

利用深度神经网络(dnn)进行轨迹预测是自动驾驶系统的重要组成部分。然而,这些方法容易受到对抗性攻击,导致碰撞等严重后果。在这项工作中,我们确定了保护轨迹预测模型免受对抗性攻击的两个关键要素,包括(1)设计有效的对抗性训练方法和(2)添加特定领域的数据增强以减轻干净数据上的性能下降。我们证明,与使用干净数据训练的模型相比,我们的方法能够在对抗数据上提高46%的性能,而在干净数据上仅降低3%的性能。此外,与现有的鲁棒性方法相比,我们的方法在对抗样本上的性能提高了21%,在干净数据上的性能提高了9%。我们的稳健模型是评估与计划,以研究其下游影响。我们证明,我们的模型可以显著降低严重事故率(例如,碰撞和越野驾驶)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Trajectory Prediction against Adversarial Attacks
Trajectory prediction using deep neural networks (DNNs) is an essential component of autonomous driving (AD) systems. However, these methods are vulnerable to adversarial attacks, leading to serious consequences such as collisions. In this work, we identify two key ingredients to defend trajectory prediction models against adversarial attacks including (1) designing effective adversarial training methods and (2) adding domain-specific data augmentation to mitigate the performance degradation on clean data. We demonstrate that our method is able to improve the performance by 46% on adversarial data and at the cost of only 3% performance degradation on clean data, compared to the model trained with clean data. Additionally, compared to existing robust methods, our method can improve performance by 21% on adversarial examples and 9% on clean data. Our robust model is evaluated with a planner to study its downstream impacts. We demonstrate that our model can significantly reduce the severe accident rates (e.g., collisions and off-road driving).
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