Model-based and model-free deep features fusion for high performed human gait recognition

被引:0
|
作者
Reem N. Yousef
Abeer T. Khalil
Ahmed S. Samra
Mohamed Maher Ata
机构
[1] Delta Higher Institute for Engineering and Technology,Electronics and Communications Engineering Department, Faculty of Engineering
[2] Mansoura University,Department of Communications and Electronics Engineering
[3] MISR Higher Institute for Engineering and Technology,undefined
来源
关键词
Silhouette images; Model-based method; Model-free method; CASIA gait dataset; Convolutional neural network (CNN);
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学科分类号
摘要
In the last decade, the need for a non-contact biometric model for recognizing candidates has increased, especially after the pandemic of COVID-19 appeared and spread worldwide. This paper presents a novel deep convolutional neural network (CNN) model that guarantees quick, safe, and precise human authentication via their poses and walking style. The concatenated fusion between the proposed CNN and a fully connected model has been formulated, utilized, and tested. The proposed CNN extracts the human features from two main sources: (1) human silhouette images according to model-free and (2) human joints, limbs, and static joint distances according to a model-based via a novel, fully connected deep-layer structure. The most commonly used dataset, CASIA gait families, has been utilized and tested. Numerous performance metrics have been evaluated to measure the system quality, including accuracy, specificity, sensitivity, false negative rate, and training time. Experimental results reveal that the proposed model can enhance recognition performance in a superior manner compared with the latest state-of-the-art studies. Moreover, the suggested system introduces a robust real-time authentication with any covariate conditions, scoring 99.8% and 99.6% accuracy in identifying casia (B) and casia (A) datasets, respectively.
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页码:12815 / 12852
页数:37
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