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An unsupervised approach to activity recognition and segmentation based on object-use fingerprints

机译:基于对象使用指纹的活动识别和细分的无监督方法

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摘要

Human activity recognition is an important task which has many potential applications. In recent years, researchers from pervasive computing are interested in deploying on-body sensors to collect observations and applying machine learning techniques to model and recognize activities. Supervised machine learning techniques typically require an appropriate training process in which training data need to be labeled manually. In this paper, we propose an unsupervised approach based on object-use fingerprints to recognize activities without human labeling. We show how to build our activity models based on object-use fingerprints, which are sets of contrast patterns describing significant differences of object use between any two activity classes. We then propose a fingerprint-based algorithm to recognize activities. We also propose two heuristic algorithms based on object relevance to segment a trace and detect the boundary of any two adjacent activities. We develop a wearable RFID system and conduct a real-world trace collection done by seven volunteers in a smart home over a period of 2 weeks. We conduct comprehensive experimental evaluations and comparison study. The results show that our recognition algorithm achieves a precision of 91.4% and a recall 92.8%, and the segmentation algorithm achieves an accuracy of 93.1% on the dataset we collected.
机译:人类活动识别是一项重要任务,具有许多潜在应用。近年来,来自普适计算的研究人员对部署人体传感器来收集观察结果以及将机器学习技术应用于活动建模和识别感兴趣。有监督的机器学习技术通常需要适当的训练过程,其中训练数据需要手动标记。在本文中,我们提出了一种基于对象使用指纹的无监督方法来识别活动而无需人工标记。我们展示了如何基于对象使用指纹建立活动模型,该模型是描述任何两个活动类之间对象使用的显着差异的对比模式集。然后,我们提出了一种基于指纹的算法来识别活动。我们还提出了两种基于对象相关性的启发式算法,以分割轨迹并检测任何两个相邻活动的边界。我们开发了可穿戴RFID系统,并在7个星期内由7位志愿者在一个智能家居中进行了现实世界的跟踪收集。我们进行全面的实验评估和比较研究。结果表明,在我们收集的数据集上,我们的识别算法达到91.4%的查准率和92.8%的查全率,而分割算法达到93.1%的查准率。

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