2024
DOI: 10.21203/rs.3.rs-3993296/v1
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Statistical modeling of deep features reduces false alarms in video change detection

Xavier Bou,
Aitor Artola,
Thibaud Ehret
et al.

Abstract: Detecting relevant changes is a fundamental problem of video surveillance. Because of the high variability of data and the difficulty of properly annotating changes, unsupervised methods dominate the field. Arguably one of the most critical issues to make them practical is to reduce their false alarm rate. In this work, we develop a method-agnostic weakly supervised a-contrario validation process, based on high dimensional statistical modeling of deep features, to reduce the number of false alarms of any chang… Show more

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