Anomalous Indoor Human Trajectory Detection Based on the Transformer Encoder and Self-Organizing Map
Doi Thi Lan,
Seokhoon Yoon
Abstract:Anomalous human trajectory detection is a critical task in security surveillance in working areas. To identify anomalous human trajectories, understanding features of their movement plays an important role. Therefore, in this work, a Transformer encoder and self-organizing map-based model called TENSO is proposed to learn trajectory characteristics for detecting anomalies. In particular, the proposed model learns the internal characteristics of normal trajectories and clusters of normal trajectory representati… Show more
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