Transfer Learning for VLC-based indoor Localization: Addressing Environmental Variability
Transfer Learning for VLC-based indoor Localization: Addressing Environmental Variability
Accurate indoor localization is crucial in industrial environments. Visible Light Communication (VLC) has emerged as a promising solution, offering high accuracy, energy efficiency, and minimal electromagnetic interference. However, VLC-based indoor localization faces challenges due to environmental variability, such as lighting fluctuations and obstacles. To address these challenges, we propose a Transfer Learning (TL)-based approach for VLC-based indoor localization. Using real-world data collected at a BOSCH factory, the TL framework integrates a deep neural network (DNN) to improve localization accuracy by 47\%, reduce energy consumption by 32\%, and decrease computational time by 40\% compared to the conventional models. The proposed solution is highly adaptable under varying environmental conditions and achieves similar accuracy with only 30\% of the dataset, making it a cost-efficient and scalable option for industrial applications in Industry 4.0.
Masood Jan、Wafa Njima、Xun Zhang、Alexander Artemenko
光电子技术
Masood Jan,Wafa Njima,Xun Zhang,Alexander Artemenko.Transfer Learning for VLC-based indoor Localization: Addressing Environmental Variability[EB/OL].(2025-07-02)[2025-07-18].https://arxiv.org/abs/2507.01575.点此复制
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