基于特征选择和生成模型的人体跌倒姿态检测

Carolina Maldonado-Mendez, Ana Luisa Solís, H. Rios-Figueroa, A. Marín-Hernández
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引用次数: 3

摘要

在本文中,我们感兴趣的是了解哪些特征为检测跌倒提供了有用的信息,以及所选特征的集合如何影响检测的准确性。为此,使用了两组特性。第一个描述了被测者的形状,第二个描述了形状随时间的变化。所有的特征都是从Kinect设备检测到的人的点云中提取出来的。为了确定一个跌倒的姿势,使用了生成模型。采用遗传算法和主成分分析两种不同的特征子集,分别对两种特征子集的提取效果进行了分析。结果表明,与主成分分析相比,遗传算法是一种较好的选择特征的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human fallen pose detection by using feature selection and a generative model
In this paper we are interesting in knowing which features provide useful information for detecting a fall and how the set of selected characteristics impact the accuracy of detection. For this purpose two sets of features are used. The first one describes the shape of the detected person, and the second one, the change of the shape over the time. All of features are extracted from a cloud of points of a detected person by the Kinect device. To determinate a fallen pose, a generative model is used. Two experiments are carried out to analyze the effect of using two different subset of features, one of them selected by a Genetic Algorithm and the second by Principal Component Analysis (PCA). The obtained results suggest that the success of detection of fall depends on the selected features, and the genetic algorithm is a good technique to select them, when compared with PCA.
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