Hidden Markov Model Based Real-Time Motion Recognition and Following

In this paper, we present a comparison between four HMM-based real-time decoding algorithms for stylistic gait recognition and following. The approach is based on a probabilistic modelling of walking gestures recorded through motion capture. The algorithms are evaluated on their ability to recover the progression of the performed gestures over time in real-time, i.e. as the gestures are performed, and their robustness when the decoding is only performed on a subset of the model dimensions. The performance of studied algorithms are also evaluated in the context of a framework for "gait reconstruction", i.e. where the walking gestures recognised on lower body dimensions are used to synchronously regenerate the upper body dimensions (and vice-versa).
© Copyright 2014 Proceedings of the 2014 International Workshop on Movement and Computing. Published by ACM. All rights reserved.

Bibliographic Details
Subjects:
Notations:technical and natural sciences technical sports
Tagging:Markov Ketten Big Data
Published in:Proceedings of the 2014 International Workshop on Movement and Computing
Language:English
Published: New York ACM 2014
Series:MOCO '14
Online Access:https://doi.org/10.1145/2617995.2618010
Pages:82
Document types:article
Level:advanced