Person Re-Identification by Analyzing Dynamic Variations in Gait Sequences

Bharadwaj, Sandesh V.Chanda, KunalGait recognition is a biometric technology that identifies individuals in a video sequence by analysing their style of walking or limb movement. However, this identification is generally sensitive to appearance changes and conventional feature descriptors such as Ga...

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Bibliographic Details
Published inEvolving Technologies for Computing, Communication and Smart World Vol. 694; pp. 399 - 410
Main Authors Bharadwaj, Sandesh V., Chanda, Kunal
Format Book Chapter
LanguageEnglish
Published Singapore Springer 2020
Springer Singapore
SeriesLecture Notes in Electrical Engineering
Subjects
Online AccessGet full text
ISBN9789811578038
9811578036
ISSN1876-1100
1876-1119
DOI10.1007/978-981-15-7804-5_30

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Summary:Bharadwaj, Sandesh V.Chanda, KunalGait recognition is a biometric technology that identifies individuals in a video sequence by analysing their style of walking or limb movement. However, this identification is generally sensitive to appearance changes and conventional feature descriptors such as Gait Energy Image (GEI) lose some of the dynamic information in the gait sequence. Active Energy Image (AEI) focuses more on dynamic motion changes than GEI and is more suited to deal with appearance changes. We proposed a new approach, which allows recognizing people by analysing the dynamic motion variations and identifying people without using a database of predicted changes. In the proposed method, the active energy image is calculated by averaging the difference frames of the silhouette sequence and divided into multiple segments. Affine moment invariants are computed as gait features for each section. Next, matching weights are calculated based on the similarity between extracted features and those in the database. Finally, the subject is identified by the weighted combination of similarities in all segments. The CASIA-B Gait Database is used as the principal dataset for the experimental analysis.
Bibliography:Center for Development of Advanced Computing, Kolkata.
ISBN:9789811578038
9811578036
ISSN:1876-1100
1876-1119
DOI:10.1007/978-981-15-7804-5_30