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Multi-timescale Trajectory Prediction for Abnormal Human Activity Detection
2020
2020 IEEE Winter Conference on Applications of Computer Vision (WACV)
A classical approach to abnormal activity detection is to learn a representation for normal activities from the training data and then use this learned representation to detect abnormal activities while testing. Typically, the methods based on this approach operate at a fixed timescale -either a single time-instant (e.g. frame-based) or a constant time duration (e.g. video-clip based). But human abnormal activities can take place at different timescales. For example, jumping is a short-term
doi:10.1109/wacv45572.2020.9093633
dblp:conf/wacv/RodriguesBVC20
fatcat:noue4uml3jfwpmlrjtqh2jgr7m