Parallelization strategies for markerless human motion capture
No Thumbnail Available
Identifiers
Date
2018-02-01
Authors
Cano, Alberto
Yeguas-Bolivar, Enrique
Munoz-Salinas, Rafael
Medina-Carnicer, Rafael
Ventura, Sebastian
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Springer heidelberg
Abstract
Markerless motion capture (MMOCAP) is the problem of determining the pose of a person from images captured by one or several cameras simultaneously without using markers on the subject. Evaluation of the solutions is frequently the most time-consuming task, making most of the proposed methods inapplicable in real-time scenarios. This paper presents an efficient approach to parallelize the evaluation of the solutions in CPUs and GPUs. Our proposal is experimentally compared on six sequences of the HumanEva-I dataset using the CMAES algorithm. Multiple algorithm's configurations were tested to analyze the best trade-off with regard to the accuracy and computing time. The proposed methods obtain speedups of 8 in multi-core CPUs, 30 in a single GPU and up to 110 using 4 GPUs.
Description
MeSH Terms
DeCS Terms
CIE Terms
Keywords
Markerless motion capture (MMOCAP), GPU, Tracking, 3d human motion, Body motion, Tracking, Stereophotogrammetry, Evolution