基于紧凑运动表征的扩散模型的无监督视频异常检测

Anil Osman Tur, Nicola Dall’Asen, C. Beyan, E. Ricci
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引用次数: 1

摘要

本文旨在解决无监督视频异常检测(VAD)问题,该问题涉及在不访问任何标签的情况下将视频中的每帧分类为正常或异常。为了实现这一目标,该方法采用条件扩散模型,其中输入数据是从预训练网络中提取的时空特征,而条件是从紧凑运动表示中提取的特征,这些特征总结了给定视频片段的运动和外观。我们的方法利用数据驱动的阈值,并考虑高重建误差作为异常事件的指标。本研究首次将紧凑运动表示用于VAD,并在两个大规模VAD基准上进行的实验表明,它们为扩散模型提供了相关信息,从而比现有技术提高了VAD的性能。重要的是,我们的方法在不同的数据集上表现出更好的泛化性能,特别是优于最先进的方法和基线方法。我们的方法的代码可以在https://github.com/AnilOsmanTur/conditioned_video_anomaly_diffusion上找到
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Unsupervised Video Anomaly Detection with Diffusion Models Conditioned on Compact Motion Representations
This paper aims to address the unsupervised video anomaly detection (VAD) problem, which involves classifying each frame in a video as normal or abnormal, without any access to labels. To accomplish this, the proposed method employs conditional diffusion models, where the input data is the spatiotemporal features extracted from a pre-trained network, and the condition is the features extracted from compact motion representations that summarize a given video segment in terms of its motion and appearance. Our method utilizes a data-driven threshold and considers a high reconstruction error as an indicator of anomalous events. This study is the first to utilize compact motion representations for VAD and the experiments conducted on two large-scale VAD benchmarks demonstrate that they supply relevant information to the diffusion model, and consequently improve VAD performances w.r.t the prior art. Importantly, our method exhibits better generalization performance across different datasets, notably outperforming both the state-of-the-art and baseline methods. The code of our method is available at https://github.com/AnilOsmanTur/conditioned_video_anomaly_diffusion
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