Convolutional neural shading for high-quality 3D reconstruction from multi-view images
  • Hwang, Juheon
  • Kim, Taewan
  • Oh, Heeseok
  • Kang, Jiwoo
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초록

We propose a convolutional neural shading (CNS), a novel pipeline to reconstruct high-quality 3D shapes from multi-view images. Several recent studies have used neural radiance fields and other neural differentiable rendering methods to understand 3D geometry. However, these approaches rely on single-point geometric information, such as positions and normals of the surface, leading to a lack of detailed local geometry. Our approach addresses the inherent limitations of single-point information by leveraging a neural shader to capture variations even in dark and textureless regions with a convolutional neural shader, resulting in far more accurate geometry predictions. Additionally, our method mitigates surface irregularities at image boundaries by introducing a fine-detail displacement network, which utilizes spatial information of surface geometry and learns fine displacement details by correlating neighboring values in the rendering coordinates. Through extensive experiments, our proposed method has demonstrated significant quality improvements in the reconstructed shapes and rendered images over current state-of-the-art methods.

제목
Convolutional neural shading for high-quality 3D reconstruction from multi-view images
저자
Hwang, JuheonKim, TaewanOh, HeeseokKang, Jiwoo
DOI
10.1007/s00530-025-01883-6
발행일
2025-06
유형
Article
저널명
Multimedia Tools and Applications
31
4