Map-Matching-Based Localization Using Camera and Low-Cost GPS for Lane-Level Accuracy

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Abstract

For self-driving systems or autonomous vehicles (AVs), accurate lane-level localization is a important for performing complex driving maneuvers. Classical GNSS-based methods are usually not accurate enough to have lane-level localization to support the AV’s maneuvers. LiDAR-based localization can provide accurate localization. However, the price of LiDARs is still one of the big issues preventing this kind of solution from becoming wide-spread commodity. Therefore, in this work, we propose a low-cost solution for lane-level localization using a vision-based system and a low-cost GPS to achieve high precision lane-level localization. Experiments in real-world and real-time demonstrate that the proposed method achieves good lane-level localization accuracy, outperforming solutions based on only GPS.

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APA

Sadli, R., Afkir, M., Hadid, A., Rivenq, A., & Taleb-Ahmed, A. (2022). Map-Matching-Based Localization Using Camera and Low-Cost GPS for Lane-Level Accuracy. Sensors, 22(7). https://doi.org/10.3390/s22072434

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