三维人体模型的姿势不变性别分类

S. Wuhrer, Chang Shu, M. Rioux
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引用次数: 13

摘要

我们研究了基于人体形状的性别分类这一重要的行为任务。我们提出了一种用激光测距仪获得的可能不完整的三角形网格来对人体进行性别分类的新技术。该分类算法不受人体姿态的影响。网格上的测地线距离用于分类。我们的研究结果表明,胸部和手腕之间的测地线距离和下背部和脸部之间的测地线距离是最重要的性别分类指标。结果表明,这种分类方法对不同姿势的人类受试者表现良好。我们将测地线距离分布建模为高斯分布,并计算模式识别中三种标准方法的分类质量:线性判别函数、贝叶斯判别函数和支持向量机。所有的实验都得到了较高的分类准确率。例如,当使用支持向量机时,我们所有的实验的分类准确率至少为93%。这表明测地线距离适用于性别区分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Posture invariant gender classification for 3D human models
We study the behaviorally important task of gender classification based on the human body shape. We propose a new technique to classify by gender human bodies represented by possibly incomplete triangular meshes obtained using laser range scanners. The classification algorithm is invariant of the posture of the human body. Geodesic distances on the mesh are used for classification. Our results indicate that the geodesic distances between the chest and the wrists and the geodesic distances between the lower back and the face are the most important ones for gender classification. The classification is shown to perform well for different postures of the human subjects. We model the geodesic distance distributions as Gaussian distributions and compute the quality of the classification for three standard methods in pattern recognition: linear discriminant functions, Bayesian discriminant functions, and support vector machines. All of the experiments yield high classification accuracy. For instance, when support vector machines are used, the classification accuracy is at least 93% for all of our experiments. This shows that geodesic distances are suitable to discriminate humans by gender.
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