Analyzing features for activity recognition

Tâm Huynh, B. Schiele
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引用次数: 376

Abstract

Human activity is one of the most important ingredients of context information. In wearable computing scenarios, activities such as walking, standing and sitting can be inferred from data provided by body-worn acceleration sensors. In such settings, most approaches use a single set of features, regardless of which activity to be recognized. In this paper we show that recognition rates can be improved by careful selection of individual features for each activity. We present a systematic analysis of features computed from a real-world data set and show how the choice of feature and the window length over which the feature is computed affects the recognition rates for different activities. Finally, we give a recommendation of suitable features and window lengths for a set of common activities.
分析活动识别的特征
人类活动是上下文信息最重要的组成部分之一。在可穿戴计算场景中,行走、站立和坐姿等活动可以从穿戴式加速度传感器提供的数据中推断出来。在这种情况下,大多数方法使用一组单一的特征,而不管要识别哪个活动。在本文中,我们证明了通过仔细选择每个活动的单个特征可以提高识别率。我们对从真实世界数据集计算的特征进行了系统分析,并展示了特征的选择和计算特征的窗口长度如何影响不同活动的识别率。最后,我们为一组常见活动提供了合适的功能和窗口长度的建议。
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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