Triplet-set feature proximity learning for video anomaly detection

IF 4.2 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Kuldeep Marotirao Biradar , Murari Mandal , Sachin Dube , Santosh Kumar Vipparthi , Dinesh Kumar Tyagi
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引用次数: 0

Abstract

The identification of anomalies in videos is a particularly complex visual challenge, given the wide variety of potential real-world events. To address this issue, our paper introduces a unique approach for detecting divergent behavior in surveillance videos, utilizing triplet-loss for video anomaly detection. Our method involves selecting a triplet set of video segments from normal (n) and abnormal (a) data points for deep feature learning. We begin by creating a database of triplet sets of two types: a-a-n and n-n-a. By computing a triplet loss, we model the proximity between n-n chunks and the distance between ‘a’ chunks from the n-n ones. Additionally, we train the deep network to model the closeness of a-a chunks and the divergent behavior of ‘n’ from the a-a chunks.

The model acquired in the initial stage can be viewed as a prior, which is subsequently employed for modeling normality. As a result, our method can leverage the advantages of both straightforward classification and normality modeling-based techniques. We also present a data selection mechanism for the efficient generation of triplet sets. Furthermore, we introduce a novel video anomaly dataset, AnoVIL, designed for human-centric anomaly detection. Our proposed method is assessed using the UCF-Crime dataset encompassing all 13 categories, the IIT-H accident dataset, and AnoVIL. The experimental findings demonstrate that our method surpasses the current state-of-the-art approaches. We conduct further evaluations of the performance, considering various configurations such as cross-dataset evaluation, loss functions, siamese structure, and embedding size. Additionally, an ablation study is carried out across different settings to provide insights into our proposed method.

用于视频异常检测的三元组特征接近学习
鉴于现实世界中可能发生的事件种类繁多,识别视频中的异常情况是一项特别复杂的视觉挑战。为了解决这个问题,我们的论文引入了一种独特的方法来检测监控视频中的异常行为,即利用三重丢失进行视频异常检测。我们的方法包括从正常(n)和异常(a)数据点中选择三重视频片段集进行深度特征学习。我们首先创建一个三元组数据库,其中包括两种类型:a-a-n 和 n-n-a。通过计算三元组损失,我们建立了 n-n 个数据块之间的邻近度模型,以及 "a "数据块与 n-n 个数据块之间的距离模型。此外,我们还对深度网络进行训练,以模拟 a-a 块之间的接近程度以及'n'与 a-a 块之间的发散行为。因此,我们的方法既能利用直接分类技术的优势,又能利用基于正态性建模技术的优势。我们还提出了一种有效生成三元组的数据选择机制。此外,我们还介绍了一个新颖的视频异常数据集 AnoVIL,该数据集是专为以人为中心的异常检测而设计的。我们使用包含所有 13 个类别的 UCF-Crime 数据集、IIT-H 事故数据集和 AnoVIL 对我们提出的方法进行了评估。实验结果表明,我们的方法超越了当前最先进的方法。我们对性能进行了进一步评估,考虑了各种配置,如跨数据集评估、损失函数、连体结构和嵌入大小。此外,我们还在不同设置下进行了消融研究,以深入了解我们提出的方法。
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来源期刊
Image and Vision Computing
Image and Vision Computing 工程技术-工程:电子与电气
CiteScore
8.50
自引率
8.50%
发文量
143
审稿时长
7.8 months
期刊介绍: Image and Vision Computing has as a primary aim the provision of an effective medium of interchange for the results of high quality theoretical and applied research fundamental to all aspects of image interpretation and computer vision. The journal publishes work that proposes new image interpretation and computer vision methodology or addresses the application of such methods to real world scenes. It seeks to strengthen a deeper understanding in the discipline by encouraging the quantitative comparison and performance evaluation of the proposed methodology. The coverage includes: image interpretation, scene modelling, object recognition and tracking, shape analysis, monitoring and surveillance, active vision and robotic systems, SLAM, biologically-inspired computer vision, motion analysis, stereo vision, document image understanding, character and handwritten text recognition, face and gesture recognition, biometrics, vision-based human-computer interaction, human activity and behavior understanding, data fusion from multiple sensor inputs, image databases.
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