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Efficient RF-based Location Sensing
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Efficient RF-based Location Sensing" By Mr. Jiajie TAN Abstract Location sensing is to detect and localize targets via sensors. Radio frequency (RF) technology, such as Wi-Fi and Bluetooth, has been proved effective and promising for location sensing due to its high cost-effectiveness, pervasiveness, and flexibility in deployment. In this thesis, we focus on device-based location sensing where RF-enabled devices are associated with targets for sensing purposes. We tackle critical challenges for the efficient deployment of RF sensing systems. First, we study the issue of MAC address randomization in Wi-Fi-based people sensing. MAC addresses are conventionally used to identify probe request frames emitted from user devices. The randomization of the addresses breaks user path semantics, leading to difficulty in trajectory analytics. We propose an efficient association algorithm that recognizes the common emitters in a set of probe requests with randomized MAC addresses while preserving user privacy. To this end, we estimate the correlation between any two frames by considering their multimodalities such as information elements, sequence numbers, and received signal strength. With frames as nodes and correlation as edge cost, we then model the frame association problem as a minimum-cost flow optimization in a flow network. Our experimental results are shown to be effective and able to associate frames of common emitters with high accuracy. Second, we study how to overcome the blind spots in sensing infrastructure to achieve large-scale tracking. We propose a novel cooperative tracking system using mobile sensors to greatly expand the sensing range for cost-effective deployment. In the system, targets carry lightweight RF tags which not only beacon their IDs but also receive and rebroadcast beacons of other tags within a certain hop away. Mobile sensors, equipped with localization and communication modules, are used to capture and forward the beacons to a server for target tracking. To enhance sensing accuracy, we introduce a matrix of received signal strength (RSS) to capture complex signal propagation, and jointly consider temporal and spatial information with a modified particle filter. Our experimental results on the campus and a shopping mall show that our scheme achieves lower tracking errors and significantly outperforms other state-of-the-art approaches. Third, to eliminate the site-survey overhead for fingerprint-based location sensing, we propose an implicit multimodal crowdsourcing method to automatically construct RF and geomagnetic fingerprint databases. We leverage the spatial correlation among RF, geomagnetic, and motion signals to mitigate the impact of sensor noise, achieving highly accurate and robust fingerprinting without any explicit manual intervention. Using dynamic programming and clustering techniques, we locate unlabeled signals on a given map and filter mislabeled signals efficiently. We conduct extensive experiments on our campus and a large multi-story shopping mall. The results show that our method outperforms other state-of-the-art crowdsourcing schemes to construct RF and geomagnetic fingerprints, in terms of accuracy and robustness. Apart from the above, as a sensing application, we propose and study an automated IoT-based geofencing algorithm to cost-effectively monitor home-quarantined confinees to contain COVID-19 pandemic. Confinees wear waterproof Bluetooth wristbands which are uniquely paired with their smartphones. The phones sense the IDs of environmental network facilities (Wi-Fi access points and cellular networks) to make IN/OUT decisions. Our experimental results validate its design and high accuracy in terms of precision, recall, F-measure, and false alarm rate. Such an idea has been adopted and deployed by the Hong Kong government to enforce the home quarantine order for hundreds of thousands of visitors so far. Date: Thursday, 5 August 2021 Time: 2:00pm - 4:00pm Zoom Meeting: https://hkust.zoom.us/j/97501930094?pwd=eDluMTNiVmRMbUxoSWw0TmY4U0Fxdz09 Chairperson: Prof. Philip MOK (ECE) Committee Members: Prof. Gary CHAN (Supervisor) Prof. Andrew HORNER Prof. Raymond WONG Prof. Wai Ho MOW (ECE) Prof. Patrick LEE (CUHK) **** ALL are Welcome ****