Traffic accident anticipation is a vital function of Automated Driving Systems (ADSs) for providing a safety-guaranteed driving experience. An accident anticipation model aims to predict accidents promptly and accurately before they occur. Existing Artificial Intelligence (AI) models of accident anticipation lack a human-interpretable explanation of their decision-making. Although these models perform well, they remain a black-box to the ADS users, thus difficult to get their trust. To this end, this paper presents a Gated Recurrent Unit (GRU) network that learns spatio-temporal relational features for the early anticipation of traffic accidents from dashcam video data. A post-hoc attention mechanism named Grad-CAM is integrated into the network to generate saliency maps as the visual explanation of the accident anticipation decision. An eye tracker captures human eye fixation points for generating human attention maps. The explainability of network-generated saliency maps is evaluated in comparison to human attention maps. Qualitative and quantitative results on a public crash dataset confirm that the proposed explainable network can anticipate an accident on average 4.57 seconds before it occurs, with 94.02% average precision. In further, various post-hoc attention-based XAI methods are evaluated and compared. It confirms that the Grad-CAM chosen by this study can generate high-quality, human-interpretable saliency maps (with 1.23 Normalized Scanpath Saliency) for explaining the crash anticipation decision. Importantly, results confirm that the proposed AI model, with a human-inspired design, can outperform humans in the accident anticipation.
翻译:自动驾驶系统(ADS)对交通事故的预测是自动驾驶系统(ADS)在提供安全保障驾驶经验方面的一个重要功能。事故预测模型旨在在事故发生之前迅速准确地预测事故。现有的人工智能(AI)事故预测模型缺乏对其决策的人类解释性解释。虽然这些模型运行良好,但它们仍然是ADS用户的一个黑箱,因此难以获得信任。为此,本文件展示了一个Gated 经常性单元(GRU)网络,从破摄像头视频数据中学习对交通事故早期预测的时空关系特征。一个名为 Grad-CAM的后热关注机制被整合到网络中,产生突出的地图作为事故预测决定的直观解释。一个眼睛追踪器捕捉了人眼的固定点,因此难以获得信任。网络生成的强度地图的可解释性与人类关注地图相比较。公共坠毁数据集的定性和定量结果证实,拟议的网络可以预测平均4.57秒发生事故,预测值为Arad-AI的准确性预测值,可以以各种精确度来评估。