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    <title>DiT on Elon&#39;s AD Insight</title>
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      <title>论文精读：BEV-VAE — Multi-View Image Generation with Spatial Consistency</title>
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      <description>现有自动驾驶多视角生成方法缺乏显式3D建模，仅将问题视为2D图像集合成。BEV-VAE提出在BEV隐空间中进行编码与生成，通过多视角VAE构造统一BEV表征，再以DiT进行潜扩散生成。在nuScenes和Argoverse 2上，BEV-VAE实现了高保真重建与3D一致的多视角生成，并支持新视角合成与3D布局可控生成。</description>
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