Parallelization strategies for markerless human motion capture

No Thumbnail Available

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
Metrics
Google Scholar
Export

Research Projects

Organizational Units

Journal Issue

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

Citation