预测(人工智能)
计算机科学
事故(哲学)
事件(粒子物理)
领域(数学分析)
人工智能
史诗
机器学习
数学
量子力学
认识论
物理
文学类
数学分析
哲学
艺术
作者
Kuo-Hao Zeng,Shih-Han Chou,Fu-Hsiang Chan,Juan Carlos Niebles,Min Sun
标识
DOI:10.1109/cvpr.2017.146
摘要
For survival, a living agent (e.g., human in Fig. 1(a)) must have the ability to assess risk (1) by temporally anticipating accidents before they occur (Fig. 1(b)), and (2) by spatially localizing risky regions (Fig. 1(c)) in the environment to move away from threats. In this paper, we take an agent-centric approach to study the accident anticipation and risky region localization tasks. We propose a novel soft-attention Recurrent Neural Network (RNN) which explicitly models both spatial and appearance-wise non-linear interaction between the agent triggering the event and another agent or static-region involved. In order to test our proposed method, we introduce the Epic Fail (EF) dataset consisting of 3000 viral videos capturing various accidents. In the experiments, we evaluate the risk assessment accuracy both in the temporal domain (accident anticipation) and spatial domain (risky region localization) on our EF dataset and the Street Accident (SA) dataset. Our method consistently outperforms other baselines on both datasets.
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