TY - JOUR PY - 2019// TI - Progressive temporal-spatial-semantic analysis of driving anomaly detection and recounting JO - Sensors (Basel) A1 - Zhu, Rixing A1 - Fang, Jianwu A1 - Xu, Hongke A1 - Xue, Jianru SP - s19235098 EP - s19235098 VL - 19 IS - 23 N2 - For analyzing the traffic anomaly within dashcam videos from the perspective of ego-vehicles, the agent should spatial-temporally localize the abnormal occasion and regions and give a semantically recounting of what happened. Most existing formulations concentrate on the former spatial-temporal aspect and mainly approach this goal by training normal pattern classifiers/regressors/dictionaries with large-scale availably labeled data. However, anomalies are context-related, and it is difficult to distinguish the margin of abnormal and normal clearly. This paper proposes a progressive unsupervised driving anomaly detection and recounting (D&R) framework. The highlights are three-fold: (1) We formulate driving anomaly D&R as a temporal-spatial-semantic (TSS) model, which achieves a coarse-to-fine focusing and generates convincing driving anomaly D&R. (2) This work contributes an unsupervised D&R without any training data while performing an effective performance. (3) We novelly introduce the traffic saliency, isolation forest, visual semantic causal relations of driving scene to effectively construct the TSS model. Extensive experiments on a driving anomaly dataset with 106 video clips (temporal-spatial-semantically labeled carefully by ourselves) demonstrate superior performance over existing techniques.
Language: en
LA - en SN - 1424-8220 UR - http://dx.doi.org/10.3390/s19235098 ID - ref1 ER -