Impact of Sensor Misplacement on Dynamic Time Warping Based Human Activity Recognition using Wearable Computers.

Nimish Kale, Jaeseong Lee, Reza Lotfian, Roozbeh Jafari
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引用次数: 39

Abstract

Daily living activity monitoring is important for early detection of the onset of many diseases and for improving quality of life especially in elderly. A wireless wearable network of inertial sensor nodes can be used to observe daily motions. Continuous stream of data generated by these sensor networks can be used to recognize the movements of interest. Dynamic Time Warping (DTW) is a widely used signal processing method for time-series pattern matching because of its robustness to variations in time and speed as opposed to other template matching methods. Despite this flexibility, for the application of activity recognition, DTW can only find the similarity between the template of a movement and the incoming samples, when the location and orientation of the sensor remains unchanged. Due to this restriction, small sensor misplacements can lead to a decrease in the classification accuracy. In this work, we adopt DTW distance as a feature for real-time detection of human daily activities like sit to stand in the presence of sensor misplacement. To measure this performance of DTW, we need to create a large number of sensor configurations while the sensors are rotated or misplaced. Creating a large number of closely spaced sensors is impractical. To address this problem, we use the marker based optical motion capture system and generate simulated inertial sensor data for different locations and orientations on the body. We study the performance of the DTW under these conditions to determine the worst-case sensor location variations that the algorithm can accommodate.

传感器错位对基于动态时间翘曲的可穿戴计算机人体活动识别的影响。
日常生活活动监测对于早期发现许多疾病的发病和改善生活质量,特别是老年人的生活质量非常重要。惯性传感器节点的无线可穿戴网络可用于观察日常运动。这些传感器网络产生的连续数据流可用于识别感兴趣的运动。相对于其他模板匹配方法,动态时间翘曲(DTW)具有对时间和速度变化的鲁棒性,是一种广泛应用于时间序列模式匹配的信号处理方法。尽管具有这种灵活性,但对于活动识别的应用,DTW只能在传感器的位置和方向保持不变的情况下找到运动模板与传入样本之间的相似性。由于这种限制,小的传感器错位会导致分类精度下降。在这项工作中,我们采用DTW距离作为实时检测人类日常活动的特征,例如在传感器错位的情况下坐到站。为了测量DTW的这种性能,我们需要在传感器旋转或错位时创建大量的传感器配置。制造大量紧密间隔的传感器是不切实际的。为了解决这个问题,我们使用基于标记的光学运动捕捉系统,并生成模拟惯性传感器数据,用于身体的不同位置和方向。我们研究了DTW在这些条件下的性能,以确定算法可以容纳的最坏情况下传感器位置变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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