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목록RegNeRF (1)
윤제로의 제로베이스
https://openaccess.thecvf.com/content/CVPR2022/papers/Niemeyer_RegNeRF_Regularizing_Neural_Radiance_Fields_for_View_Synthesis_From_Sparse_CVPR_2022_paper.pdf https://m-niemeyer.github.io/regnerf RegNeRF NeRF optimizes the reconstruction loss for a given set of input images (blue cameras). For sparse inputs, however, this leads to degenerate solutions. In this work, we propose to sample unobserve..
Self Paper-Seminar/NeRF
2023. 6. 21. 17:56