D 2017

An Evaluation Framework and Database for MoCap-Based Gait Recognition Methods

BALÁŽIA, Michal and Petr SOJKA

Basic information

Original name

An Evaluation Framework and Database for MoCap-Based Gait Recognition Methods

Authors

BALÁŽIA, Michal and Petr SOJKA

Edition

LNCS 10214. Switzerland, Proceedings of the 1st IAPR Workshop on Reproducible Research in Pattern Recognition (RRPR 2016), p. 33-47, 15 pp. 2017

Publisher

Springer International Publishing AG

Other information

Language

English

Type of outcome

Proceedings paper

Field of Study

Informatics

Country of publisher

Switzerland

Confidentiality degree

is not subject to a state or trade secret

Publication form

printed version "print"

References:

RIV identification code

RIV/00216224:14330/17:00095907

Organization

Fakulta informatiky – Repository – Repository

ISBN

978-3-319-56413-5

ISSN

UT WoS

000426089600003

EID Scopus

2-s2.0-85018657196

Keywords (in Czech)

softwarový evaluační framework; databáze dvoukroků; rozpoznávání lidi podle chůze

Keywords in English

software evaluation framework; gait cycle database; human gait recognition

Links

MUNI/A/0892/2015, interní kód Repo. MUNI/A/0935/2015, interní kód Repo.
Changed: 3/9/2020 11:05, RNDr. Daniel Jakubík

Abstract

In the original language

As a contribution to reproducible research, this paper presents a framework and a database to improve the development, evaluation and comparison of methods for gait recognition from Motion Capture (MoCap) data. The evaluation framework provides implementation details and source codes of state-of-the-art human-interpretable geometric features as well as our own approaches where gait features are learned by a modification of Fisher's Linear Discriminant Analysis with the Maximum Margin Criterion, and by a combination of Principal Component Analysis and Linear Discriminant Analysis. It includes a description and source codes of a mechanism for evaluating four class separability coefficients of feature space and four rank-based classifier performance metrics. This framework also contains a tool for learning a custom classifier and for classifying a custom query on a custom gallery. We provide an experimental database along with source codes for its extraction from the general CMU MoCap database.

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