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Privacy-preserving, indoor occupant localization using a network of single-pixel sensors

机译:使用单像素传感器网络保护隐私的室内人员本地化

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We propose an approach to indoor occupant localization using a network of single-pixel, visible-light sensors. In addition to preserving privacy, our approach vastly reduces data transmission rate and is agnostic to eavesdropping. We develop two purely data-driven localization algorithms and study their performance using a network of 6 such sensors. In one algorithm, we divide the monitored floor area (2.37m×2.72m) into a 3×3 grid of cells and classify location of a single person as belonging to one of the 9 cells using a support vector machine classifier. In the second algorithm, we estimate person's coordinates using support vector regression. In cross-validation tests in public (e.g., conference room) and private (e.g., home) scenarios, we obtain 67-72% correct classification rate for cells and 0.31-0.35m mean absolute distance error within the monitored space. Given the simplicity of sensors and processing, these are encouraging results and can lead to useful applications today.
机译:我们提出了一种使用单像素可见光传感器网络对室内人员进行定位的方法。除了保护隐私之外,我们的方法还大大降低了数据传输速率,并且与窃听无关。我们开发了两种纯粹由数据驱动的定位算法,并使用6个此类传感器组成的网络来研究其性能。在一种算法中,我们将监视的地板面积(2.37m×2.72m)划分为3×3的单元格网格,并使用支持向量机分类器将一个人的位置分类为属于9个单元格之一。在第二种算法中,我们使用支持向量回归来估计人的坐标。在公共(例如会议室)和私人(例如家庭)场景中的交叉验证测试中,我们获得了单元格的正确分类率为67-72%,并且在受监控的空间内获得了0.31-0.35m的平均绝对距离误差。鉴于传感器和处理的简单性,这些都是令人鼓舞的结果,并且可以导致当今有用的应用。

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