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TranRF: 3D Reconstruction Approach with Effective Transferability in Context-Dependent Scenes

Authors
Duan, DantingWang, YanqiSun, BingLi, ZiyiJin, HuZhang, Qin
Issue Date
Aug-2025
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
multimodal data; SSDNeRF; swin transformer; TranRF
Citation
17th International Conference on Advanced Computational Intelligence, ICACI 2025, pp 257 - 264
Pages
8
Indexed
SCOPUS
Journal Title
17th International Conference on Advanced Computational Intelligence, ICACI 2025
Start Page
257
End Page
264
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/126476
DOI
10.1109/ICACI65340.2025.11096263
Abstract
Breakthroughs in neural field representations, such as Neural Radiance Fields (NeRF) and its subsequent developments have enabled 3D reconstruction in various application scenarios. However, challenges are still encountered regarding generation accuracy, visual quality, and computational efficiency. To address the challenges in 3D reconstruction, in this paper, a method based on Single-stage diffusion nerf (SSDNeRF), called TranRF, is proposed. TranRF combines Swin Transformer with multimodal data and incorporates a genetic algorithm (GA) for feature selection, which not only enhances the accuracy of 3D reconstruction but also improves feature selection efficiency. Firstly, the Swin Transformer module helps SSDNeRF to capture rich contextual information at the multi-scale level. Secondly, the ability of the model to perceive 3D geometrical information is enhanced by the introduction of multimodal data, such as depth maps and normal maps. Then, the introduction of GA in feature selection and optimization further enhances the model's automation capability and adaptability. Finally, the evaluation on the ShapenetRender dataset shows that TranRF not only matches but, in some cases, surpasses existing state-of-the-art techniques, demonstrating its capability in enhancing both precision and computational efficiency.
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