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DeepPIRATES: A Training-Light PIR-Based Localization Method With High Generalization Ability

机译:深度:一种具有高泛化能力的训练光PIR的定位方法

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摘要

Pyroelectric infrared (PIR) sensors are much promising for device-free localization (DFL) due to their advantages of lower cost, low power consumption, and privacy protection. Most PIR-based localization methods usually assume some geometric models according to the detection principle of PIR sensors, which are however not accurate or robust due to the various cases of infrared radiation from human body, especially the case of multiple persons. Recently, deep learning is utilized in the PIR-based localization method (i.e. PIRNet Yang et al.) and well handles the complex infrared radiation even in the multi-person case. However, this method requires a high training cost, and has very weak generalization ability as it assumes the PIR sensors’ deployment in the testing environment is same to the deployment in training environment. To reduce the training cost and achieve high generalization ability, in this paper, we propose a robust method DeepPIRATES, which can be directly utilized in various deployment scenarios without retraining. DeepPIRATES combines deep learning and a geometric model. Specifically, DeepPIRATES divides the localization task into two steps. The first step utilizes a neural network to estimate the azimuth changes of multiple persons to a PIR sensor. Then, DeepPIRATES utilizes the persons’ azimuth changes to infer their locations based on a geometric model. Extensive experimental results show that DeepPIRATES can achieve similar localization accuracy as PIRNet, while does not require to be retrained when the sensor deployment changes.
机译:由于其优点,较低的成本,低功耗和隐私保护,热电红外线(PIR)传感器非常有希望对无设备定位(DFL)。基于PIR的本地化方法通常根据PIR传感器的检测原理验证一些几何模型,然而由于人体的各种红外辐射,特别是多人的情况而言,这是不准确或稳健的。最近,在基于PIR的定位方法中使用深度学习(即Pirnet Yang等人),即使在多人案例中,也很好地处理复杂的红外辐射。然而,这种方法需要高培训成本,并且具有非常弱的泛化能力,因为它假设PIR传感器在测试环境中的部署与培训环境中的部署相同。为了降低培训成本并实现高泛化能力,在本文中,我们提出了一种强大的方法,可以在没有再培训的情况下直接在各种部署方案中直接使用。 Deeppirates结合了深度学习和几何模型。具体而言,Deeppirates将本地化任务划分为两个步骤。第一步利用神经网络来估计多个人对PIR传感器的方位角变化。然后,深盗利用人的方位角改变来推断他们的位置基于几何模型来推断它们的位置。广泛的实验结果表明,深井可以在传感器部署变化时达到类似的本地化精度,而不需要被烫伤。

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