Abstract

Wearable sensors-based gait recognition is an effective method to recognize people’s identity by recognizing the unique way they walk. Recently, the adoption of deep learning networks for gait recognition has achieved significant performance improvement and become a new promising trend. However, most of the existing studies mainly focused on improving the gait recognition accuracy while ignored model complexity, which make them unsuitable for wearable devices. In this study, we proposed a lightweight attention-based Convolutional Neural Networks (CNN) model for wearable gait recognition. Specifically, a four-layer lightweight CNN was first employed to extract gait features. Then, a novel attention module based on contextual encoding information and depthwise separable convolution was designed and integrated into the lightweight CNN to enhance the extracted gait features and simplify the complexity of the model. Finally, the Softmax classifier was used for classification to realize gait recognition. We conducted comprehensive experiments to evaluate the performance of the proposed model on whuGait and OU-ISIR datasets. The effect of the proposed attention mechanisms, different data segmentation methods, and different attention mechanisms on gait recognition performance were studied and analyzed. The comparison results with the existing similar researches in terms of recognition accuracy and number of model parameters shown that our proposed model not only achieved a higher recognition performance but also reduced the model complexity by 86.5% on average.

Highlights

  • Recent years witnessed a remarkable growth in the variety and number of Wearable Intelligent Devices (WID)

  • Physiological biometrics are related to the shape of the body, e.g. human face [3], fingerprint [4] and iris [5], etc.; while behavioral biometrics are related to the pattern of behavior of a person, including gait, keystroke, signature, etc

  • In order to solve the problem of high model complexity of the existing gait recognition network based on deep learning, we proposed a lightweight attention-based Convolutional Neural Networks (CNN) model for gait-based identification using wearable Inertial Measurement Unit (IMU) sensors in this research work

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Summary

Introduction

Recent years witnessed a remarkable growth in the variety and number of Wearable Intelligent Devices (WID). Along with the great convenience brought by the WID, comes the high privacy leakage risk. Due to the large amount of private information stored in or collected by the WID, the security of the WID is of great importance. Biometrics have become the most popular technology for access control of the WID [1]. Biometrics recognize individual identity through the distinctive, stable and measurable physiological or behavioral characteristics of human [2]. There are mainly two kinds of biometrics, namely physiological biometrics and behavioral biometrics. Physiological biometrics are related to the shape of the body, e.g. human face [3], fingerprint [4] and iris [5], etc.; while behavioral biometrics are related to the pattern of behavior of a person, including gait, keystroke, signature, etc

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