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Health Problems Discovery from Motion-Capture Data of Elderly

机译:从老年人的运动捕获数据发现健康问题

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Rapid aging of the population of the developed countries could exceed the society's capacity for taking care for them. In order to help solving this problem, we propose a system for automatic discovery of health problems from motion-capture data of gait of elderly. The gait of the user is captured with the motion capture system, which consists of tags attached to the body and sensors situated in the apartment. Position of the tags is acquired by the sensors and the resulting time series of position coordinates are analyzed with machine learning algorithms in order to identify the specific health problem. We propose novel features for training a machine learning classifier that classifies the user's gait into: i) normal, ii) with hemiplegia, iii) with Parkinson's disease, iv) with pain in the back and v) with pain in the leg. Results show that naive Bayes needs more tags and less noise to reach classification accuracy of 98% than support vector machines for 99%.
机译:发达国家人口的快速衰老可能超过社会对他们照顾的能力。为了帮助解决这个问题,我们提出了一种自动发现了老年人步态运动捕获数据的自动发现健康问题。使用运动捕获系统捕获用户的步态,该系统由连接在公寓内的主体和传感器附着的标签组成。通过传感器获取标签的位置,并通过机器学习算法分析所得到的时间序列的位置坐标,以识别特定的健康问题。我们提出了培训机器学习分类器的小说特征,该分类器将用户的步态分类为:i)正常,ii)与偏瘫,iii)与帕金森病,iv)在后面的疼痛和v)疼痛。结果表明,天真贝叶斯需要更多的标签和较少的噪音,以达到98%的分类精度,而不是99%的支持向量机。

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