학술논문

Kernel Fisher Discriminant Analysis for Natural Gait Cycle Based Gait Recognition
Document Type
Article
Source
JIPS(Journal of Information Processing Systems). Aug 31, 2019 15(4):957
Subject
Gait Energy Image
Gait Recognition
Kernel Fisher Discriminant Analysis
Natural Gait Cycle
Language
English
ISSN
1976-913x
Abstract
This paper studies a novel approach to natural gait cycles based gait recognition via kernel Fisher discriminant analysis (KFDA), which can effectively calculate the features from gait sequences and accelerate the recognition process. The proposed approach firstly extracts the gait silhouettes through moving object detection and segmentation from each gait videos. Secondly, gait energy images (GEIs) are calculated for each gait videos, and used as gait features. Thirdly, KFDA method is used to refine the extracted gait features, and low-dimensional feature vectors for each gait videos can be got. The last is the nearest neighbor classifier is applied to classify. The proposed method is evaluated on the CASIA and USF gait databases, and the results show that our proposed algorithm can get better recognition effect than other existing algorithms.