A Real-Time Deep Learning Approach for Real-World Video Anomaly Detection

S. Petrocchi, Giacomo Giorgi, M. Cimino
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引用次数: 1

Abstract

Anomaly detection in video streams with imbalanced data and real-time constraints is a challenging task of computer vision. This paper proposes a novel real-time approach for real-world video anomaly detection exploiting a supervised learning methodology. In particular, we present a deep learning architecture based on the analysis of contextual, spatial, and motion information extracted from the video. A data balancing strategy based on hard-mining and adaptive framerate is used to avoid overfitting and increase detection accuracy. The approach defines an extended taxonomy by differentiating anomalies in ”soft” and ”hard”. A novel anomaly detection score based on a sigmoidal function has been introduced to reduce false positive rate while maintaining a high level of true positive rate. The proposed methodology has been validated with a set of experiments on a well-known video anomaly dataset: UCF-CRIME. The experiments on the testbed demonstrate the impact of the contextual information and data balancing on the classification performances, considering only ”hard” anomalies during training and that the proposed model can achieve state-of-the-art performances while minimizing resource consumption.
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一种用于真实世界视频异常检测的实时深度学习方法
具有不平衡数据和实时约束的视频流异常检测是计算机视觉的一项具有挑战性的任务。本文提出了一种利用监督学习方法进行实时视频异常检测的新方法。特别地,我们提出了一种基于从视频中提取的上下文、空间和运动信息分析的深度学习架构。采用基于硬挖掘和自适应帧率的数据平衡策略,避免了过拟合,提高了检测精度。该方法通过区分“软”和“硬”异常定义了一个扩展的分类法。提出了一种新的基于s型函数的异常检测评分,在保持高水平真阳性率的同时减少假阳性率。本文提出的方法已经在一个著名的视频异常数据集UCF-CRIME上进行了一组实验验证。在测试平台上的实验证明了上下文信息和数据平衡对分类性能的影响,只考虑训练过程中的“硬”异常,并且所提出的模型可以在最小化资源消耗的同时达到最先进的性能。
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