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📄 Abstract
Abstract: This paper proposes a Diffusion Model-Optimized Neural Radiance Field
(DT-NeRF) method, aimed at enhancing detail recovery and multi-view consistency
in 3D scene reconstruction. By combining diffusion models with Transformers,
DT-NeRF effectively restores details under sparse viewpoints and maintains high
accuracy in complex geometric scenes. Experimental results demonstrate that
DT-NeRF significantly outperforms traditional NeRF and other state-of-the-art
methods on the Matterport3D and ShapeNet datasets, particularly in metrics such
as PSNR, SSIM, Chamfer Distance, and Fidelity. Ablation experiments further
confirm the critical role of the diffusion and Transformer modules in the
model's performance, with the removal of either module leading to a decline in
performance. The design of DT-NeRF showcases the synergistic effect between
modules, providing an efficient and accurate solution for 3D scene
reconstruction. Future research may focus on further optimizing the model,
exploring more advanced generative models and network architectures to enhance
its performance in large-scale dynamic scenes.