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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >A SKELETON FEATURES-BASED FALL DETECTION USING MICROSOFT KINECT V2 WITH ONE CLASS-CLASSIFIER OUTLIER REMOVAL
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A SKELETON FEATURES-BASED FALL DETECTION USING MICROSOFT KINECT V2 WITH ONE CLASS-CLASSIFIER OUTLIER REMOVAL

机译:使用MICROSOFT KINECT V2和一个CLASS-CLASSIER OUTLIER消除功能,基于骨架特征的瀑布检测

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The real-time and robust fall detection is one of the key components of elderly people care and monitoring systems. Depth sensors, as they became more available, occupy an increasing place in event recognition systems. Some of them can directly produce a skeletal description of the human figure for compact representation of a person’s posture. Skeleton description makes the output of source video or detailed information about the depth outside the system unnecessary and raises the privacy of the entire system. Based on a comparative study of different RGB-D cameras, the most promising model for further development was chosen - Microsoft Kinect v2. The TST Fall Detection Dataset v2 is used here as a base for experiments. The proposed algorithm is based on the skeleton features encoding on the sequence of neighboring frames and support vector machine classifier. A version of a cumulative sum method is applied for combining the individual decisions on the consecutive frames. It is offered to use the one-class classifier for detection of low-quality skeletons. The 0.958 accuracy of our fall detection procedure was obtained in the cross-validation procedure based on the removal of records of a particular person from the database (Leave-one-Person-out).
机译:实时且稳健的跌倒检测是老年人护理和监控系统的关键组成部分之一。随着深度传感器的普及,它们在事件识别系统中的地位越来越重要。其中一些可以直接生成人物的骨骼描述,以紧凑地表示一个人的姿势。骨架描述使得不需要输出源视频或有关系统外部深度的详细信息,并提高了整个系统的私密性。根据对不同RGB-D相机的比较研究,选择了最有希望进行进一步开发的模型-Microsoft Kinect v2。 TST跌落检测数据集v2在此处用作实验的基础。该算法基于对相邻帧序列编码的骨架特征和支持向量机分类器。累积和方法的一种形式适用于组合连续帧上的各个决策。它提供了使用一类分类器来检测低质量骨骼的功能。我们的跌倒检测程序的准确度为0.958,这是在交叉验证过程中基于从数据库中删除某个特定人的记录(留一人)而获得的。

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