Key-Pose Prediction in Cyclic Human Motion
This work addresses a domain-specific challenge for analyzing top-class swimmers' motion, offering incremental improvements in key-pose detection.
The paper tackles the problem of estimating key-pose intervals in repetitive swimming motions by predicting key-poses from support poses using a maximum likelihood model, achieving high precision and improved recall with prior knowledge and additional camera views.
In this paper we study the problem of estimating innercyclic time intervals within repetitive motion sequences of top-class swimmers in a swimming channel. Interval limits are given by temporal occurrences of key-poses, i.e. distinctive postures of the body. A key-pose is defined by means of only one or two specific features of the complete posture. It is often difficult to detect such subtle features directly. We therefore propose the following method: Given that we observe the swimmer from the side, we build a pictorial structure of poselets to robustly identify random support poses within the regular motion of a swimmer. We formulate a maximum likelihood model which predicts a key-pose given the occurrences of multiple support poses within one stroke. The maximum likelihood can be extended with prior knowledge about the temporal location of a key-pose in order to improve the prediction recall. We experimentally show that our models reliably and robustly detect key-poses with a high precision and that their performance can be improved by extending the framework with additional camera views.