Explicit Correspondence Matching for Generalizable Neural Radiance Fields.

IF 18.6
Yuedong Chen, Haofei Xu, Qianyi Wu, Chuanxia Zheng, Tat-Jen Cham, Jianfei Cai
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Abstract

We present a new generalizable NeRF method that is able to directly generalize to new unseen scenarios and perform novel view synthesis with as few as two source views. The key to our approach lies in the explicitly modeled correspondence matching information, so as to provide the geometry prior to the prediction of NeRF color and density for volume rendering. The explicit correspondence matching is quantified with the cosine similarity between image features sampled at the 2D projections of a 3D point on different views, which is able to provide reliable cues about the surface geometry. Unlike previous methods where image features are extracted independently for each view, we consider modeling the cross-view interactions via Transformer cross-attention, which greatly improves the feature matching quality. Our method achieves state-of-the-art results on different evaluation settings, with the experiments showing a strong correlation between our learned cosine feature similarity and volume density, demonstrating the effectiveness and superiority of our proposed method. Code and pretrained weights are at https://github.com/donydchen/matchnerf.

广义神经辐射场的显式对应匹配。
我们提出了一种新的可泛化的NeRF方法,该方法能够直接泛化到新的未见场景,并使用少至两个源视图执行新的视图合成。我们方法的关键在于显式建模对应匹配信息,从而在预测NeRF颜色和密度之前为体渲染提供几何形状。明确的对应匹配是量化的图像特征之间的余弦相似度采样在一个三维点的二维投影在不同的观点,这能够提供可靠的线索,表面的几何形状。与以往的图像特征提取方法不同,我们考虑通过Transformer交叉关注来建模跨视图交互,这大大提高了特征匹配质量。我们的方法在不同的评估设置下获得了最先进的结果,实验表明我们学习的余弦特征相似度与体积密度之间存在很强的相关性,证明了我们提出的方法的有效性和优越性。代码和预训练的权重在https://github.com/donydchen/matchnerf。
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