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arxiv:2412.05074

LoFi: Vision-Aided Label Generator for Wi-Fi Localization and Tracking

Published on Dec 6, 2024
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Abstract

LoFi generates precise ground truth for Wi-Fi localization and tracking using 2D images, addressing the limitations of existing data collection techniques.

AI-generated summary

Data-driven Wi-Fi localization and tracking have shown great promise due to their lower reliance on specialized hardware compared to model-based methods. However, most existing data collection techniques provide only coarse-grained ground truth or a limited number of labeled points, significantly hindering the advancement of data-driven approaches. While systems like lidar can deliver precise ground truth, their high costs make them inaccessible to many users. To address these challenges, we propose LoFi, a vision-aided label generator for Wi-Fi localization and tracking. LoFi can generate ground truth position coordinates solely from 2D images, offering high precision, low cost, and ease of use. Utilizing our method, we have compiled a Wi-Fi tracking and localization dataset using the ESP32-S3 and a webcam, which will be open-sourced along with the code upon publication.

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