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Non-Intrusive Presence Detection and Position Tracking for Multiple People Using Low-Resolution Thermal Sensors

机译:使用低分辨率热传感器的多人非侵入式状态检测和位置跟踪

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This paper presents a framework to accurately and non-intrusively detect the number of people in an environment and track their positions. Different from most of the previous studies, our system setup uses only ambient thermal sensors with low-resolution, using no multimedia resources or wearable sensors. This preserves user privacy in the environment, and requires no active participation by the users, causing no discomfort. We first develop multiple methods to estimate the number of people in the environment. Our experiments demonstrate that algorithm selection is very important, but with careful selection, we can obtain up to 100% accuracy when detecting user presence. In addition, we prove that sensor placement plays a crucial role in the system performance, where placing the sensor on the room ceiling yields to the best results. After accurately finding the number of people in the environment, we perform position tracking on the collected ambient data, which are thermal images of the space where there are multiple people. We consider position tracking as static activity detection, where the user’s position does not change while performing activities, such as sitting, standing, etc. We perform efficient pre-processing on the data, including normalization and resizing, and then feed the data into well-known machine learning methods. We tested the efficiency of our framework (including the hardware and software setup) by detecting four static activities. Our results show that we can achieved up to 97.5% accuracy when detecting these static activities, with up to 100% class-wise precision and recall rates. Our framework can be very beneficial to several applications such as health-care, surveillance, and home automation, without causing any discomfort or privacy issues for the users.
机译:本文提出了一个框架,该框架可以准确无误地检测环境中的人数并跟踪他们的位置。与大多数以前的研究不同,我们的系统设置仅使用低分辨率的环境温度传感器,不使用多媒体资源或可穿戴式传感器。这在环境中保护了用户隐私,并且不需要用户的积极参与,不会引起不适。我们首先开发多种方法来估计环境中的人数。我们的实验表明,算法选择非常重要,但是通过仔细选择,检测用户存在时我们可以获得高达100%的准确性。此外,我们证明了传感器的放置在系统性能中起着至关重要的作用,将传感器放置在房间的天花板上可获得最佳效果。在准确找到环境中的人数之后,我们对收集到的环境数据进行位置跟踪,这些数据是多人空间的热图像。我们将位置跟踪视为静态活动检测,其中用户的位置在执行活动(例如坐着,站着等)时不会发生变化。我们对数据进行有效的预处理,包括归一化和调整大小,然后将数据输入到井中机器学习方法。我们通过检测四个静态活动来测试了框架(包括硬件和软件设置)的效率。我们的结果表明,当检测到这些静态活动时,我们可以达到97.5%的精度,分类精度和召回率高达100%。我们的框架对于医疗保健,监视和家庭自动化等多种应用非常有益,而不会给用户带来任何不适或隐私问题。

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