Gait Analysis for Human Walking Paths and Identities Recognition

碩士 === 國立清華大學 === 電機工程學系 === 96 === In this thesis, we combine the dynamic and static information extracted from gait to identify the walking human object. First we utilize the periodicity of swing distances to estimate the gait period for each gait sequence and divide them to sub-cycles. For each g...

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Main Authors: Ke-Zen Chen, 陳科任
Other Authors: Chung-Lin Huang
Format: Others
Language:en_US
Published: 2008
Online Access:http://ndltd.ncl.edu.tw/handle/97098466450800877831
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spelling ndltd-TW-096NTHU54420722015-11-27T04:04:17Z http://ndltd.ncl.edu.tw/handle/97098466450800877831 Gait Analysis for Human Walking Paths and Identities Recognition 利用步伐姿態來辨識人的步行路徑和身份 Ke-Zen Chen 陳科任 碩士 國立清華大學 電機工程學系 96 In this thesis, we combine the dynamic and static information extracted from gait to identify the walking human object. First we utilize the periodicity of swing distances to estimate the gait period for each gait sequence and divide them to sub-cycles. For each gait cycle, we extract the static information by proceeding intersecting operation and dynamic information by analyzing the statistic histogram of motion vectors. The extracted information is transformed into low dimensional embedding space by dimensionality reduction process. The low-dimensional feature vector is used to represent the subject. Then, we use a set of discriminant functions to determine the decision regions for normal data distribution, and then we can recognize the human walking path. Given a test feature vector, the nearest neighbor classifier is applied to compare with the feature vectors established from a gait database for subject identification. The proposed algorithm is evaluated on the CASIA gait database, and the experimental results demonstrate that own system achieves a high recognition rate. Chung-Lin Huang 黃仲陵 2008 學位論文 ; thesis 56 en_US
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language en_US
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description 碩士 === 國立清華大學 === 電機工程學系 === 96 === In this thesis, we combine the dynamic and static information extracted from gait to identify the walking human object. First we utilize the periodicity of swing distances to estimate the gait period for each gait sequence and divide them to sub-cycles. For each gait cycle, we extract the static information by proceeding intersecting operation and dynamic information by analyzing the statistic histogram of motion vectors. The extracted information is transformed into low dimensional embedding space by dimensionality reduction process. The low-dimensional feature vector is used to represent the subject. Then, we use a set of discriminant functions to determine the decision regions for normal data distribution, and then we can recognize the human walking path. Given a test feature vector, the nearest neighbor classifier is applied to compare with the feature vectors established from a gait database for subject identification. The proposed algorithm is evaluated on the CASIA gait database, and the experimental results demonstrate that own system achieves a high recognition rate.
author2 Chung-Lin Huang
author_facet Chung-Lin Huang
Ke-Zen Chen
陳科任
author Ke-Zen Chen
陳科任
spellingShingle Ke-Zen Chen
陳科任
Gait Analysis for Human Walking Paths and Identities Recognition
author_sort Ke-Zen Chen
title Gait Analysis for Human Walking Paths and Identities Recognition
title_short Gait Analysis for Human Walking Paths and Identities Recognition
title_full Gait Analysis for Human Walking Paths and Identities Recognition
title_fullStr Gait Analysis for Human Walking Paths and Identities Recognition
title_full_unstemmed Gait Analysis for Human Walking Paths and Identities Recognition
title_sort gait analysis for human walking paths and identities recognition
publishDate 2008
url http://ndltd.ncl.edu.tw/handle/97098466450800877831
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