Robustness Evaluation of HD Map Constructors under Sensor Corruptions for Autonomous Driving
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Description
The paper focuses on evaluating the robustness of HD map constructors under various sensor corruptions using a comprehensive benchmark called MapBench. It highlights the vulnerability of existing methods to real-world challenges and suggests the importance of advanced data augmentation techniques and new network architectures to enhance robustness for autonomous driving applications.
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