An energy-aware method for the joint recognition of activities and gestures using wearable sensors

Joseph Korpela, Kazuyuki Takase, T. Hirashima, T. Maekawa, Julien Eberle, D. Chakraborty, K. Aberer
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引用次数: 28

Abstract

This paper presents an energy-aware method for recognizing time series acceleration data containing both activities and gestures using a wearable device coupled with a smartphone. In our method, we use a small wearable device to collect accelerometer data from a user's wrist, recognizing each data segment using a minimal feature set chosen automatically for that segment. For each collected data segment, if our model finds that recognizing the segment requires high-cost features that the wearable device cannot extract, such as dynamic time warping for gesture recognition, then the segment is transmitted to the smartphone where the high-cost features are extracted and recognition is performed. Otherwise, only the minimum required set of low-cost features are extracted from the segment on the wearable device and only the recognition result, i.e., label, is transmitted to the smartphone in place of the raw data, reducing transmission costs. Our method automatically constructs this adaptive processing pipeline solely from training data.
一种能量感知方法,用于使用可穿戴传感器联合识别活动和手势
本文提出了一种能量感知方法,用于识别包含活动和手势的时间序列加速数据,该方法使用可穿戴设备与智能手机相结合。在我们的方法中,我们使用一个小型可穿戴设备从用户的手腕收集加速度计数据,使用自动选择的最小特征集识别每个数据段。对于每一个收集到的数据片段,如果我们的模型发现识别该片段需要可穿戴设备无法提取的高成本特征,例如手势识别的动态时间翘曲,则将该片段传输到智能手机,在智能手机上提取高成本特征并进行识别。否则,从可穿戴设备上的片段中只提取所需的最低成本特征集,并且只将识别结果即标签传输到智能手机,而不是原始数据,从而降低了传输成本。我们的方法仅从训练数据自动构建自适应处理管道。
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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