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Detection and Analysis of Transitional Activity in Manifold Space

机译:流形空间中过渡活动的检测与分析

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摘要

Activity monitoring is important for assessing daily living conditions for elderly patients and those with chronic diseases. Transitions between activities can present characteristic patterns that may be indicative of quality of movement. To detect and analyze transitional activities, a manifold-based approach is proposed in this paper. The proposed method uses a recursive spectral graph-partitioning algorithm to segment transitions in activity. These segments are subsequently mapped to a reference manifold space. Categorization of transitions is performed with the corresponding features in the manifold space. The practical value of the work is demonstrated through data collected under laboratory conditions, as well as patients recovering from total knee replacement operations, demonstrating specific transitions and motion impairment compared to normal subjects.
机译:活动监测对于评估老年患者和慢性病患者的日常生活条件非常重要。活动之间的过渡可以呈现可以指示运动质量的特征模式。为了检测和分析过渡活动,本文提出了一种基于流形的方法。所提出的方法使用递归光谱图分割算法来分割活动中的转变。这些段随后映射到参考歧管空间。过渡的分类是利用歧管空间中的相应特征执行的。通过在实验室条件下收集的数据以及从全膝关节置换手术中康复的患者证明了这项工作的实用价值,与正常受试者相比,这些患者表现出特定的过渡和运动障碍。

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