講演名 2010-10-08
Gait-based Person Identification Robust against Speed Variation using CHLAC features and HMMs
,
PDFダウンロードページ PDFダウンロードページへ
抄録(和)
抄録(英) The performance of gait-based person identification is strongly affected by the variations in walking speed. In our previous study, we have proposed a new framework that is robust against speed variation across gait sequences, which combines the Fisher discriminant analysis (FDA)-based cubic higher-order local auto-correlation (CHLAC) features and the statistical framework provided by hidden Markov models (HMMs). The CHLAC features capture the within-phase spatio-temporal characteristics of each walker, while the HMMs identify the person and the phase of each gait even when the walking speed changes nonlinearly. However, since CHLAC features do not have much shape information of a gait phase, it is difficult to identify/segment the walking phase accurately. Therefore in this paper, we not only use CHLAC features to train the HMM, but also utilize principal component analysis (PCA) features that have more shape information of a gait phase in order to have a better gait cycle segmentation/alignment process. We also evaluate our method when the walking speed varied within a gait sequence by manually creating mixed speed variation data within a gait sequence in TokyoTech database. We compared our method with other conventional methods using three other public databases. The proposed method was better than the others when the speed varied across and within a gait sequence.
キーワード(和)
キーワード(英) CHLAC / FDA / PCA / Gaussian Mixture HMMs
資料番号 PRMU2010-92,SP2010-48,WIT2010-36
発行日

研究会情報
研究会 WIT
開催期間 2010/10/1(から1日開催)
開催地(和)
開催地(英)
テーマ(和)
テーマ(英)
委員長氏名(和)
委員長氏名(英)
副委員長氏名(和)
副委員長氏名(英)
幹事氏名(和)
幹事氏名(英)
幹事補佐氏名(和)
幹事補佐氏名(英)

講演論文情報詳細
申込み研究会 Well-being Information Technology(WIT)
本文の言語 ENG
タイトル(和)
サブタイトル(和)
タイトル(英) Gait-based Person Identification Robust against Speed Variation using CHLAC features and HMMs
サブタイトル(和)
キーワード(1)(和/英) / CHLAC
第 1 著者 氏名(和/英) / AQMAR Muhammad RASYID
第 1 著者 所属(和/英)
Department of Computer Science, Graduate School of Information Science and Engineering, Tokyo Institute of Technology
発表年月日 2010-10-08
資料番号 PRMU2010-92,SP2010-48,WIT2010-36
巻番号(vol) vol.110
号番号(no) 221
ページ範囲 pp.-
ページ数 6
発行日