Anomaly Detection Using Classification CNN Models: A Video Analytic Approach

S. Girisha, M. Pai, Ujjwal Verma, R. Pai, Shreesha Surathkal
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引用次数: 1

Abstract

Video anomaly detection has gained much attention in the computer vision community due to its wide applications in security. Specifically, the focus has been on feature extraction and the design of inference algorithms. The extraction of features to model the normality is challenging due to the scarcity of data and supervision. To this end, current computer vision technologies use reconstruction based methods that relied on auto-encoders to reconstruct normal events in an unsupervised manner. Higher reconstruction errors are often used to detect anomalies. However, the use of multiple auto-encoders to extract features (temporal and appearance) is redundant and expensive for videos. In this context, the present study proposes a novel feature extractor that uses a single CNN architecture to extract both temporal and appearance features. Also, this model is trained for classification tasks which are adapted as feature extractors in anomaly detection. The training of this model is easy and can be deployed efficiently due to its lightweight architecture. Further, the proposed model has been quantitatively evaluated on the UCSD ped 2 dataset and found to perform competitively with an AUC of 0.958.
使用分类CNN模型的异常检测:一种视频分析方法
视频异常检测因其在安全领域的广泛应用而受到计算机视觉界的广泛关注。具体来说,重点是特征提取和推理算法的设计。由于数据和监督的稀缺性,提取特征来建模正态性是具有挑战性的。为此,当前的计算机视觉技术使用基于重建的方法,依赖于自动编码器以无监督的方式重建正常事件。较高的重构误差常用于检测异常。然而,使用多个自编码器来提取特征(时间和外观)对视频来说是多余的和昂贵的。在这种背景下,本研究提出了一种新的特征提取器,它使用单一的CNN架构来提取时间和外观特征。此外,该模型还可以用于分类任务的训练,这些分类任务可以作为异常检测中的特征提取器。该模型具有轻量级的结构,训练简单,可有效部署。此外,在UCSD ped 2数据集上对所提出的模型进行了定量评估,发现AUC为0.958,具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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