Towards Deep Learning-based Occupancy Detection Via WiFi Sensing in Unconstrained Environments

Cristian Turetta, Geri Skenderi, Luigi Capogrosso, Florenc Demrozi, Philipp H. Kindt, Alejandro Masrur, F. Fummi, M. Cristani, G. Pravadelli
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Abstract

In the context of smart buildings and smart cities, the design of low-cost and privacy-aware solutions for recognizing the presence of humans and their activities is becoming of great interest. Existing solutions exploiting wearables and video-based systems have several drawbacks, such as high cost, low usability, poor portability, and privacy-related issues. Consequently, more ubiquitous and accessible solutions, such as WiFi sensing, became the focus of attention. However, at the current state-of-the-art, WiFi sensing is subject to low accuracy and poor generalization, primarily affected by environmental factors, such as humidity and temperature variations, and furniture position changes. Such is-sues are partially solved at the cost of complex data preprocessing pipelines. In this paper, we present a highly accurate, resource-efficient deep learning-based occupancy detection solution, which is resilient to variations in humidity and temperature. The approach is tested on an extensive benchmark, where people are free to move and the furniture layout does change. In addition, based on a consolidated algorithm of explainable AI, we quantify the importance of the WiFi signal w.r.t. humidity and temperature for the proposed approach. Notably, humidity and temperature can indeed be predicted based on WiFi signals; this promotes the expressivity of the WiFi signal and at the same time the need for a non-linear model to properly deal with it.
基于深度学习的无约束环境下WiFi感知占用检测
在智能建筑和智能城市的背景下,设计低成本和隐私意识的解决方案来识别人类的存在和他们的活动正变得非常有趣。利用可穿戴设备和基于视频的系统的现有解决方案存在一些缺点,例如成本高、可用性低、可移植性差以及与隐私相关的问题。因此,诸如WiFi传感等更普遍、更容易获得的解决方案成为人们关注的焦点。但在目前的技术水平下,WiFi传感精度较低,泛化程度较差,主要受环境因素的影响,如湿度和温度的变化,家具位置的变化等。这类问题的部分解决是以复杂的数据预处理管道为代价的。在本文中,我们提出了一种高度准确、资源高效的基于深度学习的占用检测解决方案,该解决方案对湿度和温度的变化具有弹性。这种方法在一个广泛的基准上进行了测试,在那里人们可以自由移动,家具布局也可以改变。此外,基于可解释人工智能的综合算法,我们量化了WiFi信号w.r.t.湿度和温度对所提出方法的重要性。值得注意的是,湿度和温度确实可以根据WiFi信号来预测;这提高了WiFi信号的表现力,同时也需要非线性模型来妥善处理它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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