Detection and Classification of Human Activities using Distributed Sensing of Environmental Vibrations

Marcel Koch, Fabian Schlenke, Fabian Kohlmorgen, Markus Kuller, J. Bauer, Hendrik Wöhrle
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引用次数: 1

Abstract

The recognition of human activities in a smart home is an essential prerequisite in order to derive typical behaviors and needs of the inhabitants and adapt the functions of the smart home to them. Different sensor modalities, such as video or audio data in combination with machine learning methods can be used for this purpose. However, the use of video and audio data is associated with a strong infringement on the privacy of the inhabitants. In this paper, we present an alternative approach that uses vibrational data that is acquired by stationary wall-mounted sensors to detect a specific set of inhabitant activities using machine learning. We compare different neural-network based time series classifiers and show that is possible to detect the selected activities with up to 95% accuracy.
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利用环境振动的分布式感知来检测和分类人类活动
对智能家居中人类活动的识别是得出居民典型行为和需求并使智能家居功能适应他们的必要前提。不同的传感器模式,如结合机器学习方法的视频或音频数据,可用于此目的。然而,视频和音频数据的使用严重侵犯了居民的隐私。在本文中,我们提出了一种替代方法,该方法使用固定式壁挂式传感器获取的振动数据来使用机器学习检测一组特定的居民活动。我们比较了不同的基于神经网络的时间序列分类器,并表明可以以高达95%的准确率检测选定的活动。
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