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A Motion Induced Passive Infrared (PIR) Sensor for Stationary Human Occupancy Detection

机译:运动感应被动红外(PIR)传感器,用于固定人体占位检测

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Passive Infrared (PIR) sensors are commonly used in indoor applications to detect human presence. PIR sensors detect human presence by detecting the change in infrared radiation across the polarity of the sensor. Due to this, PIR sensors are unable to accurately detect stationary human subjects, which results in false negatives. In the pursuit of creating a low-cost solution for detecting stationary occupants in a closed space, the novel approach to mount a PIR sensor on a moving platform was developed (MI-PIR). This approach was developed for the system to artificially induce the motion that is necessary for stationary human detection. Utilizing the raw analog output of the PIR sensor and an artificial neural network (ANN), the closed space was accurately classified for room occupancy, the number of occupants, the approximate location of the human targets, and the differentiation of targets. This novel approach provides the advantages of a utilizing a single PIR sensor for human presence detection, while eliminating the major known drawback to this type of sensor. Scanning the room using a PIR sensor also allows for an expanded field of view (FoV) and a simpler deployment, in comparison to other approaches using a PIR sensor. Finally, MI-PIR expands the functionalities of PIR sensors by using an ANN to detect various other occupancy parameters. The experimental results show that the system can detect room classification with 99% accuracy, 91% accuracy in occupancy count estimation, 93% accuracy in relative location prediction, and 93% accuracy in human target differentiation. These results show promise for an application of tracking and monitoring an at-risk patient in an indoor setting.
机译:无源红外(PIR)传感器通常用于室内应用中以检测人的存在。 PIR传感器通过检测整个传感器极性上的红外辐射变化来检测人的存在。因此,PIR传感器无法准确检测静止的人体,从而导致假阴性。为了寻求一种低成本的解决方案来检测封闭空间中的固定乘员,开发了一种将PIR传感器安装在移动平台上的新颖方法(MI-PIR)。这种方法是为系统开发的,用于人为地诱导静止人体检测所必需的运动。利用PIR传感器的原始模拟输出和人工神经网络(ANN),可以对封闭空间进行精确分类,以区分房间占用,人数,人类目标的大致位置以及目标的区分。这种新颖的方法提供了利用单个PIR传感器进行人体状态检测的优势,同时消除了此类传感器的主要已知缺点。与使用PIR传感器的其他方法相比,使用PIR传感器扫描房间还可以扩大视野(FoV)和简化部署。最后,MI-PIR通过使用ANN来检测各种其他占用参数,从而扩展了PIR传感器的功能。实验结果表明,该系统能够以99%的准确度,91%的入住人数估计准确度,93%的相对位置预测准确度和93%的人类目标区分准确度检测房间分类。这些结果表明有望在室内环境中跟踪和监视高危患者。

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