Smart City Gnosys

Smart city article details

Title Selfloc: Robust Self-Supervised Indoor Localization With Ieee 802.11Az Wi-Fi For Smart Environments
ID_Doc 48212
Authors Rizk H.; Elmogy A.
Year 2025
Published Electronics (Switzerland), 14, 13
DOI http://dx.doi.org/10.3390/electronics14132675
Abstract Accurate and scalable indoor localization is a key enabler of intelligent automation in smart environments and industrial systems. In this paper, we present SelfLoc, a self-supervised indoor localization system that combines IEEE 802.11az Round Trip Time (RTT) and Received Signal Strength Indicator (RSSI) data to achieve fine-grained positioning using commodity Wi-Fi infrastructure. Unlike conventional methods that depend heavily on labeled data, SelfLoc adopts a contrastive learning framework to extract spatially discriminative and temporally consistent representations from unlabeled wireless measurements. The system integrates a dual-contrastive strategy: temporal contrasting captures sequential signal dynamics essential for tracking mobile agents, while contextual contrasting promotes spatial separability by ensuring that signal representations from distinct locations remain well-differentiated, even under similar signal conditions or environmental symmetry. To this end, we design signal-specific augmentation techniques for the physical properties of RTT and RSSI, enabling the model to generalize across environments. SelfLoc also adapts effectively to new deployment scenarios with minimal labeled data, making it suitable for dynamic and collaborative industrial applications. We validate the effectiveness of SelfLoc through experiments conducted in two realistic indoor testbeds using commercial Android devices and seven Wi-Fi access points. The results demonstrate that SelfLoc achieves high localization precision, with a median error of only 0.55 m, and surpasses state-of-the-art baselines by at least 63.3% with limited supervision. These findings affirm the potential of SelfLoc to support spatial intelligence and collaborative automation, aligning with the goals of Industry 4.0 and Society 5.0, where seamless human–machine interactions and intelligent infrastructure are key enablers of next-generation smart environments. © 2025 by the authors.
Author Keywords contrastive learning; Fine Time Measurement (FTM); IEEE 802.11az; indoor localization; low-cost localization infrastructure; RSSI fusion; self-supervised learning; smart environments; ubiquitous positioning; Wi-Fi RTT


Similar Articles


Id Similarity Authors Title Published
14554 View0.887Song X.; Fan X.; He X.; Xiang C.; Ye Q.; Huang X.; Fang G.; Chen L.L.; Qin J.; Wang Z.Cnnloc: Deep-Learning Based Indoor Localization With Wifi FingerprintingProceedings - 2019 IEEE SmartWorld, Ubiquitous Intelligence and Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Internet of People and Smart City Innovation, SmartWorld/UIC/ATC/SCALCOM/IOP/SCI 2019 (2019)
17983 View0.882Alabdullah A.; Al-Hubaishi M.Deep Learning-Enhanced Single Station Wi-Fi Localization For Social Networking In Smart EnvironmentsProceedings of 5th International Conference on Pervasive Computing and Social Networking, ICPCSN 2025 (2025)
39623 View0.878Abraha A.T.; Wang B.; Yu Z.; He J.Obloc: Online Batch Localization For Large-Scale Indoor EnvironmentsIEEE Systems Journal, 17, 4 (2023)
31241 View0.866Neupane I.; Shahrestani S.; Ruan C.Indoor Localization Of Resource-Constrained Iot Devices Using Wi-Fi Fingerprinting And Convolutional Neural NetworkACM International Conference Proceeding Series (2024)
59024 View0.865Li Z.; Wang P.; Tian Z.; Liu K.Triloc: Toward Accurate Indoor Localization With Assistance Of Microwave ReflectionsIEEE Transactions on Microwave Theory and Techniques, 71, 6 (2023)
59422 View0.856Kerdjidj O.; Himeur Y.; Sohail S.S.; Amira A.; Fadli F.; Atalla S.; Mansoor W.; Copiaco A.; Gawanmeh A.; Miniaoui S.; Dawoud D.Uncovering The Potential Of Indoor Localization: Role Of Deep And Transfer LearningIEEE Access, 12 (2024)