A real-time multi view gait-based automatic gender classification system using kinect sensor

被引:0
作者
Muhammad Azhar
Sehat Ullah
Muhammad Raees
Khaliq Ur Rahman
Inam Ur Rehman
机构
[1] University of Malakand,Department of Computer Science & IT
[2] Abdul Wali Khan University,Department of Statistics
来源
Multimedia Tools and Applications | 2023年 / 82卷
关键词
Gender classification; Gait recognition; Binary logistic regression;
D O I
暂无
中图分类号
学科分类号
摘要
Gender classification plays an important role in many applications such as security and medical applications. Human gender can be classified using different biometric techniques such as face recognition, voice recognition, activity recognition and gait recognition. Different approaches based on gait-recognition have been proposed for the identification of gender. However, performance and accuracy of such systems suffer from the recurring and inherent issues like occlusion of body parts, computational costs and false recognition of 3D joints. The problems can be subdued with deep feature-based analysis and extensive calculation but that may further degrade performance of the system. In this paper, we propose a limited feature-based, Three Dimensional (3D), real time, and multi-view gait-based automatic gender classification system using Microsoft kinect (MS Kinect). A statistical model is molded from the binary logistic regression of the gait data extracted at run time using the sensor. The proposed method is successfully implemented and evaluated by 80 (50 male and 30 female) users. The achieved accuracy rate (97.50%) proves applicability of the model.
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页码:11993 / 12016
页数:23
相关论文
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  • [1] Begg RK(2005)Support vector machines for automated gait classification IEEE Trans Biomed Eng 52 828-838
  • [2] Palaniswami M(2012)A review of automatic speaker age classification, recognition and identifying speaker emotion using voice signal Int J Sci Res 3 1307-1311
  • [3] Owen B(2021)Deep learning for sensor-based human activity recognition: overview, challenges, and opportunities ACM Comput Surv (CSUR) 54 1-40
  • [4] Chaudhari S(2021)Multi-view gait image generation for cross-view gait recognition IEEE Trans Image Process 30 3041-3055
  • [5] Kagalkar R(2015)What else does your biometric data reveal? A survey on soft biometrics IEEE Trans Inform Forens Secur 11 441-467
  • [6] Chen K(2019)From emotions to mood disorders: a survey on gait analysis methodology IEEE J Biomed Health Inform 23 2302-2316
  • [7] Zhang D(2014)Classification and translation of style and affect in human motion using rbf neural networks Neurocomputing 129 585-595
  • [8] Yao L(2015)Correlation-optimized time warping for motion Vis Comput 31 1569-1586
  • [9] Guo B(2016)Expert-driven perceptual features for modeling style and affect in human motion IEEE Trans Human-Mach Syst 46 534-545
  • [10] Yu Z(2015)Dense rgb-d map-based human tracking and activity recognition using skin joints features and self-organizing map KSII Trans Internet Inform Syst (TIIS) 9 1856-1869