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Feature selection to detect fallen pose using depth images

机译:使用深度图像检测下降姿势的功能选择

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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 performance of detection. Then we define a large set of possible features, which are extracted from a cloud of points of a person by the kinect device, some of features were used in previous work, and we propose to add and evaluate the effect of using 3D moment invariants translation, scale an rotation, and other geometric characteristics. 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.
机译:在本文中,我们很有趣了解哪些功能提供了用于检测到秋季的有用信息以及所选特征的集合如何影响检测性能。然后,我们定义了一系列可能的功能,这些功能由Kinect设备从一个人的点云中提取,一些功能在以前的工作中使用,我们建议添加和评估使用3D时刻不变的效果,缩放旋转和其他几何特征。进行了两次实验,以分析使用两种不同的特征子集,其中一个由遗传算法选择的效果,并通过主成分分析(PCA)。所获得的结果表明,跌倒检测的成功取决于所选特征,并且遗传算法与PCA相比,选择它们的良好技术。

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