一种宽松感测服对康复中姿态识别的影响

Holger Harms, Oliver Amft, G. Tröster
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引用次数: 30

摘要

已经提出了几种用于姿势和运动康复的智能传感服装。现有的系统需要在身体部位紧密贴合衣服,并精确定位传感器。在这项工作中,我们分析了一种宽松的传感服装在肩部和肘部康复相关的21种姿势自动识别中的误差。比较了附着在衣服上的加速度传感器和附加在皮肤上的参考物的识别性能,讨论了基于衣服的姿势分类的挑战。这项分析是通过七名身体比例不同的参与者所穿的一件固定尺寸的衬衫来完成的。与皮肤附着的参考传感器相比,使用服装集成传感器数据的分类准确率平均低13%。即使选择了最优的输入特征集,这种关系仍然保持不变。对于服装传感器,我们观察到,随着身体尺寸的增加,分类精度的损失减少。此外,还分析了个体姿势的对中误差,以识别特别受服装合身方面影响的动作和姿势。相反,我们发现21种与康复相关的姿势中有14种导致传感器对准误差较低。我们认为,这些结果表明了运动康复中舒适服装部署的关键设计方面,应该在服装和姿势选择中加以考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence of a loose-fitting sensing garment on posture recognition in rehabilitation
Several smart sensing garments have been proposed for postural and movement rehabilitation. Existing systems require a tight-fitting of the garment at body segments and precise sensor positioning. In this work, we analyzed errors of a loose-fitting sensing garment on the automatic recognition of 21 postures, relevant in shoulder and elbow-rehabilitation. The recognition performance of garment-attached acceleration sensors and additional skin-attached references was compared to discuss challenges in a garment-based classification of postures. The analysis was done with one fixed-size shirt worn by seven participants of varying body proportions. The classification accuracy using data from garment-integrated sensors was on average 13% lower compared to that of skin-attached reference sensors. This relation remained constant even after selecting an optimal input feature set. For garment-attached sensors, we observed that the loss in classification accuracy decreased, if the body dimension increased. Moreover, the alignment error of individual postures was analyzed, to identify movements and postures that are particularly affected by garment fitting aspects. Contrarily, we showed that 14 of the 21 rehabilitation-relevant postures result in a low sensor alignment error. We believe that these results indicate critical design aspects for the deployment of comfortable garments in movement rehabilitation and should be considered in garment and posture selection.
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