CVDec 14, 2021

Approaches Toward Physical and General Video Anomaly Detection

arXiv:2112.07661v1
Originality Synthesis-oriented
AI Analysis

This work addresses anomaly detection in manufacturing and maintenance settings, but it is incremental as it focuses on establishing benchmarks rather than proposing novel methods.

The paper tackles the problem of detecting anomalous mechanical behavior in videos, which is overlooked compared to surveillance anomaly detection, by evaluating two baseline approaches and introducing the PHANOM dataset with six video classes for benchmarking.

In recent years, many works have addressed the problem of finding never-seen-before anomalies in videos. Yet, most work has been focused on detecting anomalous frames in surveillance videos taken from security cameras. Meanwhile, the task of anomaly detection (AD) in videos exhibiting anomalous mechanical behavior, has been mostly overlooked. Anomaly detection in such videos is both of academic and practical interest, as they may enable automatic detection of malfunctions in many manufacturing, maintenance, and real-life settings. To assess the potential of the different approaches to detect such anomalies, we evaluate two simple baseline approaches: (i) Temporal-pooled image AD techniques. (ii) Density estimation of videos represented with features pretrained for video-classification. Development of such methods calls for new benchmarks to allow evaluation of different possible approaches. We introduce the Physical Anomalous Trajectory or Motion (PHANTOM) dataset, which contains six different video classes. Each class consists of normal and anomalous videos. The classes differ in the presented phenomena, the normal class variability, and the kind of anomalies in the videos. We also suggest an even harder benchmark where anomalous activities should be spotted on highly variable scenes.

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