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Human Gender Classification Based on Gait Features Using Kinect Sensor

机译:基于使用Kinect传感器的步态特征的人性性别分类

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Gender classification is an important task in video surveillance. Terrorists and other criminals mostly act from a distance. Therefore, it is proposed that a gait-based method that recognizes humans remotely is required. In this paper, we propose a new method of gait-based gender classification based on the Kinect sensor, using a model based on the feature set, 'Dynamic Distance Feature (DDF)'. Nearest Neighbour (NN), Linear Discriminant Classifier (LDC), and Support Vector Machine (SVM) are used separately as a classification method. The method is tested based on skeletal data provided by the Microsoft Kinect. The experimental results show that the proposed method provided significant results by achieving 96.67%, 91% and 90% accuracy for gender classification using NN, LDC, and SVM respectively.
机译:性别分类是视频监控中的重要任务。恐怖分子和其他罪犯主要来自远处。因此,建议需要远程识别人类的基于步态的方法。在本文中,我们提出了一种基于Kinect传感器的基于步态的性别分类的新方法,使用基于特征集的模型'动态距离特征(DDF)'。最近的邻居(NN),线性判别分类器(LDC)和支持向量机(SVM)作为分类方法单独使用。该方法基于Microsoft Kinect提供的骨架数据进行测试。实验结果表明,该方法通过分别使用NN,LDC和SVM实现了96.67 %,91 %和90 %的性别分类来提供了显着的结果。

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