Smart City Gnosys

Smart city article details

Title Towards Deep Learning-Based Occupancy Detection Via Wifi Sensing In Unconstrained Environments
ID_Doc 58088
Authors Turetta C.; Skenderi G.; Capogrosso L.; Demrozi F.; Kindt P.H.; Masrur A.; Fummi F.; Cristani M.; Pravadelli G.
Year 2023
Published Proceedings -Design, Automation and Test in Europe, DATE, 2023-April
DOI http://dx.doi.org/10.23919/DATE56975.2023.10137260
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. © 2023 EDAA.
Author Keywords Channel State Information; Deep Learning; WiFi Sensing


Similar Articles


Id Similarity Authors Title Published
30897 View0.867Samareh Abolhassani S.; Zandifar A.; Ghourchian N.; Amayri M.; Bouguila N.; Eicker U.Improving Residential Building Energy Simulations Through Occupancy Data Derived From Commercial Off-The-Shelf Wi-Fi Sensing TechnologyEnergy and Buildings, 272 (2022)
53644 View0.863Suleiman B.; Anaissi A.; Xiao Y.; Yaqub W.; Raju A.S.; Alyassine W.Supervised Learning-Based Indoor Positioning System Using Wifi FingerprintsLecture Notes in Networks and Systems, 700 LNNS (2023)
39650 View0.858Tang C.; Li W.; Vishwakarma S.; Chetty K.; Julier S.; Woodbridge K.Occupancy Detection And People Counting Using Wifi Passive RadarIEEE National Radar Conference - Proceedings, 2020-September (2020)