For safety of autonomous driving, vehicles need to be able to drive under various lighting, weather, and visibility conditions in different environments. These external and environmental factors, along with internal factors associated with sensors, can pose significant challenges to perceptual data processing, hence affecting the decision-making and control of the vehicle. In this work, we address this critical issue by introducing a framework for analyzing robustness of the learning algorithm w.r.t varying quality in the image input for autonomous driving. Using the results of sensitivity analysis, we further propose an algorithm to improve the overall performance of the task of "learning to steer". The results show that our approach is able to enhance the learning outcomes up to 48%. A comparative study drawn between our approach and other related techniques, such as data augmentation and adversarial training, confirms the effectiveness of our algorithm as a way to improve the robustness and generalization of neural network training for autonomous driving.
翻译:为了自动驾驶的安全性,车辆必须能够在不同的照明、天气和可见度条件下在不同环境中驾驶。这些外部和环境因素,连同与传感器有关的内部因素,对感官数据处理构成重大挑战,从而影响车辆的决策和控制。在这项工作中,我们通过引入一个框架来分析自主驾驶图像输入质量差异的学习算法的稳健性来解决这一关键问题。我们利用敏感度分析的结果,进一步提议一种算法来改进“学会驾驶”任务的总体绩效。结果显示,我们的方法能够将学习结果提高到48%。在我们的方法与诸如数据扩充和对抗性培训等其他相关技术之间进行比较研究,证实了我们的算法的有效性,以此提高自主驾驶神经网络培训的稳健性和普遍性。