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Human Gait Recognition Using Deep Learning and Improved Ant Colony Optimization

Authors
Khan, AwaisKhan, Muhammad AttiqueJaved, Muhammad YounusAlhaisoni, MajedTariq, UsmanKadry, SeifedineChoi, Jung-InNam, Yunyoung
Issue Date
Jan-2022
Publisher
Tech Science Press
Keywords
Gait recognition; deep learning; transfer learning; features optimization; classification
Citation
Computers, Materials and Continua, v.70, no.2, pp 2113 - 2130
Pages
18
Journal Title
Computers, Materials and Continua
Volume
70
Number
2
Start Page
2113
End Page
2130
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/20385
DOI
10.32604/cmc.2022.018270
ISSN
1546-2218
1546-2226
Abstract
Human gait recognition (HGR) has received a lot of attention in the last decade as an alternative biometric technique. The main challenges in gait recognition are the change in in-person view angle and covariant factors. The major covariant factors are walking while carrying a bag and walking while wearing a coat. Deep learning is a new machine learning technique that is gaining popularity. Many techniques for HGR based on deep learning are presented in the literature. The requirement of an efficient framework is always required for correct and quick gait recognition. We proposed a fully automated deep learning and improved ant colony optimization (IACO) framework for HGR using video sequences in this work. The proposed framework consists of four primary steps. In the first step, the database is normalized in a video frame. In the second step, two pre-trained models named ResNet101 and InceptionV3 are selected and modified according to the dataset's nature. After that, we trained both modified models using transfer learning and extracted the features. The IACO algorithm is used to improve the extracted features. IACO is used to select the best features, which are then passed to the Cubic SVM for final classification. The cubic SVM employs a multiclass method. The experiment was carried out on three angles (0, 18, and 180) of the CASIA B dataset, and the accuracy was 95.2, 93.9, and 98.2 percent, respectively. A comparison with existing techniques is also performed, and the proposed method outperforms in terms of accuracy and computational time.
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