超要約: 自動運転の地図作りを、オープンソースで爆速&低コスで実現!
ギャル的キラキラポイント✨ ● コスパ最強: オープンソース(無料で使えるソフト)の地図データとツールを駆使😎✨ ● 自由自在: いろんなシミュレーター(仮想空間)に対応できる柔軟性💖 ● 未来がアツい: 自動運転技術の進化を加速させちゃう可能性大🚀
詳細解説
リアルでの使いみちアイデア💡
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The fast development of technology and artificial intelligence has significantly advanced Autonomous Vehicle (AV) research, emphasizing the need for extensive simulation testing. Accurate and adaptable maps are critical in AV development, serving as the foundation for localization, path planning, and scenario testing. However, creating simulation-ready maps is often difficult and resource-intensive, especially with simulators like CARLA (CAR Learning to Act). Many existing workflows require significant computational resources or rely on specific simulators, limiting flexibility for developers. This paper presents a custom workflow to streamline map creation for AV development, demonstrated through the generation of a 3D map of a parking lot at Ontario Tech University. Future work will focus on incorporating SLAM technologies, optimizing the workflow for broader simulator compatibility, and exploring more flexible handling of latitude and longitude values to enhance map generation accuracy.