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A Multiple-stage Classification of Fall Motions Using Kinect Camera

机译:使用Kinect相机进行秋季运动的多级分类

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This paper proposes a model of fall detection using hybrid classification methods in video streaming. In particular, we are interested in a stream of data representing time sequential frames of fifteen body joint positions capturable by Kinect camera. A set of features is then extracted and fed into the designated multiple-stage classification. The first stage classifies a fall as a different event from normal activities of daily living (ADLs). The second stage is to classify types of fall once the fall was detected in the first stage, for aiding the diagnosis and treatment of a fall by a physician. We selected a number of reliable machine learning algorithms (MLP, SVM, and decision tree) in forming a hybrid model. Experimental results show that the first stage classifier can differentiate falls and ADLs with 99.98% accuracy and the second stage classifier can identify type of fall with 99.35% accuracy.
机译:本文提出了使用视频流中的混合分类方法进行了坠落检测模型。特别地,我们对表示通过Kinect相机可抵抗的十五个主体关节位置的时间顺序框架的数据流感兴趣。然后提取一组特征,并馈入指定的多级分类。第一阶段根据日常生活(ADL)的正常活动分类为不同的事件。第二阶段是在第一阶段在第一阶段检测到秋季的秋季来分类秋季的类型,以帮助通过医生诊断和治疗堕落。我们在形成混合模型时选择了许多可靠的机器学习算法(MLP,SVM和决策树)。实验结果表明,第一阶段分类器可以区分跌落和ADL,精度为99.98%,第二级分类器可以识别99.35%的精度下降。

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