Decoupling Video and Human Motion: Towards Practical Event Detection in Athlete Recordings

04/21/2020
by   Moritz Einfalt, et al.
0

In this paper we address the problem of motion event detection in athlete recordings from individual sports. In contrast to recent end-to-end approaches, we propose to use 2D human pose sequences as an intermediate representation that decouples human motion from the raw video information. Combined with domain-adapted athlete tracking, we describe two approaches to event detection on pose sequences and evaluate them in complementary domains: swimming and athletics. For swimming, we show how robust decision rules on pose statistics can detect different motion events during swim starts, with a F1 score of over 91 to infer stride-related events in long and triple jump recordings, leading to highly accurate detections with 96 deviation. Our approach is not limited to these domains and shows the flexibility of pose-based motion event detection.

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