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      <title>论文精读：Bench2Drive — Towards Multi-Ability Benchmarking of Closed-Loop End-To-End Autonomous Driving</title>
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      <description>现有端到端自动驾驶评测存在开环指标不可靠、长路线闭环方差大、缺乏统一训练集三大问题。Bench2Drive 由上海交通大学提出，是首个面向多维度驾驶能力的闭环评测基准，提供 200 万帧统一标注训练数据与 220 条短路线多技能评估协议。实验表明开环 L2 误差与闭环驾驶分数相关性极弱（Pearson r=0.03），专家特征蒸馏与细粒度能力评估是提升端到端自动驾驶的关键方向。</description>
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