Moving-Object-Aware Anomaly Detection in Surveillance Videos

Chun-Lung Yang, Tsung-Hsuan Wu, S. Lai
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引用次数: 2

Abstract

Video anomaly detection plays a crucial role in automatically detecting abnormal actions or events from surveillance video, which can help to protect public safety. Deep learning techniques have been extensively employed and achieved excellent anomaly detection results recently. However, previous image-reconstruction-based models did not fully exploit foreground object regions for the video anomaly detection. Some recent works applied pre-trained object detectors to provide local context in the video surveillance scenario for anomaly detection. Nevertheless, these methods require prior knowledge of object types for the anomaly which is somewhat contradictory to the problem setting of unsupervised anomaly detection. In this paper, we propose a novel framework based on learning the moving-object feature prediction based on a convolutional autoencoder architecture. We train our anomaly detector to be aware of moving-object regions in a scene without using an object detector or requiring prior knowledge of specific object classes for the anomaly. The appearance and motion features in moving objects regions provide comprehensive information of moving foreground objects for unsupervised learning of video anomaly detector. Besides, the proposed latent representation learning scheme encourages the convolutional autoencoder model to learn a more convergent latent representation for normal training data, while anomalous data exhibits quite different representations. We also propose a novel anomaly scoring method based on the feature prediction errors of moving foreground object regions and the latent representation regularity. Our experimental results demonstrate that the proposed approach achieves competitive results compared with SOTA methods on three public datasets for video anomaly detection.
监控视频中的运动对象感知异常检测
视频异常检测在自动检测监控视频中的异常动作或事件中起着至关重要的作用,有助于保障公共安全。近年来,深度学习技术得到了广泛的应用,并取得了良好的异常检测效果。然而,以往基于图像重建的模型并没有充分利用前景目标区域进行视频异常检测。最近的一些工作应用预训练的对象检测器在视频监控场景中为异常检测提供局部上下文。然而,这些方法需要对异常对象类型的先验知识,这与无监督异常检测的问题设置有些矛盾。本文提出了一种基于卷积自编码器结构的运动目标特征预测学习框架。我们训练我们的异常检测器来感知场景中的移动物体区域,而不需要使用对象检测器或需要对异常的特定对象类的先验知识。运动目标区域的外观和运动特征为视频异常检测器的无监督学习提供了全面的运动前景目标信息。此外,所提出的潜在表征学习方案鼓励卷积自编码器模型对正常训练数据学习更收敛的潜在表征,而异常数据则表现出完全不同的表征。我们还提出了一种基于运动前景目标区域的特征预测误差和潜在表示规律的异常评分方法。实验结果表明,该方法与SOTA方法在三个公共数据集上的视频异常检测效果相当。
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