Gesture recognition in smart home using passive RFID technology

K. Bouchard, A. Bouzouane, B. Bouchard
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引用次数: 21

Abstract

Gesture recognition is a well-establish topic of research that is widely adopted for a broad range of applications. For instance, it can be exploited for the command of a smart environment without any remote control unit or even for the recognition of human activities from a set of video cameras deployed in strategic position. Many researchers working on assistive smart home, such as our team, believe that the intrusiveness of that technology will prevent the future adoption and commercialization of smart homes. In this paper, we propose a novel gesture recognition algorithm that is solely based on passive RFID technology. This technology enables the localization of small tags that can be embedded in everyday life objects (a cup or a book, for instance) while remaining non intrusive. However, until now, this technology has been largely ignored by researchers on gesture recognition, mostly because it is easily disturbed by noise (metal, human, etc.) and offer limited precision. Despite these issues, the localization algorithms have improved over the years, and our recent efforts resulted in a real-time tracking algorithm with a precision approaching 14cm. With this, we developed a gesture recognition algorithm able to perform segmentation of gestures and prediction on a spatio-temporal data series. Our new model, exploiting works on qualitative spatial reasoning, achieves recognition of 91%. Our goal is to ultimately use that knowledge for both human activity recognition and errors detection.
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被动射频识别技术在智能家居中的应用
手势识别是一个建立良好的研究课题,被广泛应用于各种领域。例如,它可以在没有任何远程控制单元的情况下用于智能环境的指挥,甚至可以通过部署在战略位置的一组摄像机识别人类活动。许多研究辅助智能家居的研究人员,比如我们的团队,认为这种技术的侵入性将阻碍智能家居的未来采用和商业化。在本文中,我们提出了一种新的基于无源RFID技术的手势识别算法。这项技术使小标签的定位可以嵌入到日常生活物品(例如,一个杯子或一本书),同时保持非侵入性。然而,到目前为止,这项技术在很大程度上被手势识别的研究人员所忽视,主要是因为它容易受到噪音(金属、人等)的干扰,而且精度有限。尽管存在这些问题,但多年来定位算法已经得到了改进,我们最近的努力导致了精度接近14厘米的实时跟踪算法。在此基础上,我们开发了一种能够对时空数据序列进行手势分割和预测的手势识别算法。我们的新模型,利用定性空间推理的工作,达到91%的识别率。我们的目标是最终将这些知识用于人类活动识别和错误检测。
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