相位配准改进了基于自组织图的循环分类和聚类

Juan-Carlos Quintana-Duque, D. Saupe
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引用次数: 1

摘要

自组织映射(SOMs),也称为自组织特征映射,已被用于降低关节运动学和动力学数据的复杂性,以便对循环运动数据进行聚类、分类和可视化。本文描述了用动态时间规整的相位配准预处理数据训练som后的结果。为了验证,我们记录了人体运动的加速度数据,这些数据随跑步机坡度、活动(即步行、慢跑、跑步)以及是否在脚踝上附加1.5 kg的重量而变化。采用相位配准后,训练后的SOMs拓扑质量有所提高。此外,当对每个单独的活动应用阶段注册时,测试(即跑步机坡度和步态类型的组合)和受试者分类得到改善,特别是对于步行数据。将我们所有的实验周期合在一起计算相配准后,活动分类得到了改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Phase registration improves classification and clustering of cycles based on self-organizing maps
Self-Organizing Maps (SOMs), also known as Self-Organizing Feature Maps, have been used to reduce the complexity of joint kinematic and kinetic data in order to cluster, classify and visualize cyclic motion data. In this paper we describe the results after training SOMs with preprocessed data based on phase registration by dynamic time warping. For validation, we recorded acceleration data of human locomotion varying the treadmill slope, activity (i.e., walking, jogging, running), and whether or not 1.5 kg weights were attached to the ankles. The topological quality of the SOMs after training improved when the phase registration was applied. Furthermore, test (i.e., combination of treadmill slope and type of gait) and subject classification improved, in particular for walking data, when the phase registration was applied for each individual activity. Activity classification improved when the phase registration was calculated from all cycles of our experiments together.
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