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Detecting gait-related health problems of the elderly using multidimensional dynamic time warping approach with semantic attributes

机译:利用具有语义属性的多维动态时间规整方法检测老年人的步态相关健康问题

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We present a health-monitoring system based on the multidimensional dynamic time warping approach with semantic attributes for the detection of health problems in the elderly to prolong their autonomous living. The movement of the elderly user is captured with a motion-capture system that consists of body-worn tags, whose coordinates are acquired by sensors located in an apartment. The output time series of the coordinates are modeled with the proposed data-mining approach in order to recognize the specific health problem of an elderly person. This paper is an extension of our previous study, which proposed four data mining approaches to recognition of health problems, falls and activities of elderly from their motion patterns. The most successful of the four approaches is SMDTW (Multidimensional dynamic time-warping approach with semantic attributes), whose version is used and thoroughly analyzed in this paper. SMDTW is the modification of the DTW algorithm to use with the multidimensional time series with semantic attributes. To test the robustness of the SMDTW approach, this study calculates the DTW on the time series of various lengths. The semantic attributes presented here consist of the joint angles that are able to recognize many types of movement, e.g., health problems, falls and activities, in contrast to the more specific approaches with specific medically defined attributes from the literature. The k-nearest-neighbor classifier using SMDTW as a distance measure classifies movement of an elderly person into five different health states: one healthy and four unhealthy. Even though the new approach is more general and can be used to differentiate other types of activities or health problems, it achieves very high classification accuracy of 97.2%, comparable to the more specific approaches.
机译:我们提出了一种基于多维动态时间规整方法的健康监测系统,该方法具有语义属性,用于检测老年人的健康问题,以延长他们的自主生活。老年人的运动由运动捕捉系统捕获,该系统由身体佩戴的标签组成,其坐标由位于公寓中的传感器获取。使用提出的数据挖掘方法对坐标的输出时间序列进行建模,以便识别老年人的特定健康问题。本文是我们先前研究的扩展,该研究提出了四种数据挖掘方法,以根据老年人的运动方式识别健康问题,跌倒和活动。四种方法中最成功的是SMDTW(具有语义属性的多维动态时间扭曲方法),其版本已被使用并在本文中进行了全面分析。 SMDTW是DTW算法的修改,可用于具有语义属性的多维时间序列。为了测试SMDTW方法的鲁棒性,本研究在各种长度的时间序列上计算了DTW。与文献中具有医学上定义的特定属性的更具体的方法相比,此处呈现的语义属性由关节角组成,这些关节角能够识别多种类型的运动,例如健康问题,跌倒和活动。使用SMDTW作为距离度量的k近邻分类器将老年人的运动分为五种不同的健康状态:一种健康,四种不健康。尽管新方法更为通用,可用于区分其他类型的活动或健康问题,但与更具体的方法相比,它可实现97.2%的非常高的分类准确率。

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