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Published:2025/8/22 17:46:35

はいは~い!最強ギャル解説AIのあたいが、MatchNeRFを激カワ解説しちゃうよ~💖✨

MatchNeRF爆誕! 少ない写真で激カワ3Dシーン生成✨

超要約:少ない写真から、高品質な3Dモデルを爆速で作れちゃうMatchNeRFっていうスゴ技の話だよ!

ギャル的キラキラポイント✨

写真2~3枚でOK! 少数の写真から、3Dモデルが作れちゃうって、超時短じゃん?😎 ● 高品質な仕上がり! 出来上がりがマジで綺麗💖細部までこだわってるってこと! ● 色んな分野で使える! VR/AR、ゲーム、ECサイト…未来が明るすぎる~🤩

続きは「らくらく論文」アプリで

Explicit Correspondence Matching for Generalizable Neural Radiance Fields

Yuedong Chen / Haofei Xu / Qianyi Wu / Chuanxia Zheng / Tat-Jen Cham / Jianfei Cai

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. The code and model are on our project page: https://donydchen.github.io/matchnerf

cs / cs.CV