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Weakly Supervised Temporal Anomaly Segmentation with Dynamic Time Warping

Title
Weakly Supervised Temporal Anomaly Segmentation with Dynamic Time Warping
Authors
Dongha LeeHyunjun JuSehun YuHwanjo Yu
Date Issued
2021-10-11
Publisher
ICCV 2021
Abstract
Most recent studies on detecting and localizing temporal anomalies have mainly employed deep neural networks to learn the normal patterns of temporal data in an unsupervised manner. Unlike them, the goal of our work is to fully utilize instance-level (or weak) anomaly labels, which only indicate whether any anomalous events occurred or not in each instance of temporal data. In this paper, we present WETAS, a novel framework that effectively identifies anomalous temporal segments (i.e., consecutive time points) in an input instance. WETAS learns discriminative features from the instance-level labels so that it infers the sequential order of normal and anomalous segments within each instance, which can be used as a rough segmentation mask. Based on the dynamic time warping (DTW) alignment between the input instance and its segmentation mask, WETAS obtains the result of temporal segmentation, and simultaneously, it further enhances itself by using the mask as additional supervision. Our experiments show that WETAS considerably outperforms other baselines in terms of the localization of temporal anomalies, and also it provides more informative results than point-level detection methods. © 2021 IEEE
URI
https://oasis.postech.ac.kr/handle/2014.oak/108242
Article Type
Conference
Citation
IEEE Int. Conf. Computer Vision 2021(ICCV 2021), page. 7355 - 7364, 2021-10-11
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유환조YU, HWANJO
Dept of Computer Science & Enginrg
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