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Papers/A Background-Agnostic Framework with Adversarial Training ...

A Background-Agnostic Framework with Adversarial Training for Abnormal Event Detection in Video

Mariana-Iuliana Georgescu, Radu Tudor Ionescu, Fahad Shahbaz Khan, Marius Popescu, Mubarak Shah

2020-08-27Anomaly Detection In Surveillance VideosAbnormal Event Detection In VideoEvent DetectionOutlier DetectionAnomaly Detection
PaperPDFCode(official)Code

Abstract

Abnormal event detection in video is a complex computer vision problem that has attracted significant attention in recent years. The complexity of the task arises from the commonly-adopted definition of an abnormal event, that is, a rarely occurring event that typically depends on the surrounding context. Following the standard formulation of abnormal event detection as outlier detection, we propose a background-agnostic framework that learns from training videos containing only normal events. Our framework is composed of an object detector, a set of appearance and motion auto-encoders, and a set of classifiers. Since our framework only looks at object detections, it can be applied to different scenes, provided that normal events are defined identically across scenes and that the single main factor of variation is the background. To overcome the lack of abnormal data during training, we propose an adversarial learning strategy for the auto-encoders. We create a scene-agnostic set of out-of-domain pseudo-abnormal examples, which are correctly reconstructed by the auto-encoders before applying gradient ascent on the pseudo-abnormal examples. We further utilize the pseudo-abnormal examples to serve as abnormal examples when training appearance-based and motion-based binary classifiers to discriminate between normal and abnormal latent features and reconstructions. We compare our framework with the state-of-the-art methods on four benchmark data sets, using various evaluation metrics. Compared to existing methods, the empirical results indicate that our approach achieves favorable performance on all data sets. In addition, we provide region-based and track-based annotations for two large-scale abnormal event detection data sets from the literature, namely ShanghaiTech and Subway.

Results

TaskDatasetMetricValueModel
Video UnderstandingUCSD Peds2AUC98.7Background-Agnostic Framework
VideoUCSD Peds2AUC98.7Background-Agnostic Framework
Anomaly DetectionUCSD Ped2FPS24Background-Agnostic
Anomaly DetectionUCSD Peds2AUC98.7Background-Agnostic Framework
Anomaly DetectionCUHK AvenueFPS25Background-Agnostic Framework
Anomaly DetectionCUHK AvenueRBDC65.05Background-Agnostic Framework
Anomaly DetectionCUHK AvenueTBDC66.85Background-Agnostic Framework
Anomaly DetectionUBnormalRBDC25.43Background-Agnostic Framework
Anomaly DetectionUBnormalTBDC56.27Background-Agnostic Framework
Anomaly DetectionUCSD Peds2AUC98.7Background-Agnostic Framework

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