SR-CurvANN: Advancing 3D surface reconstruction through curvature-aware neural networks

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Marina Hernández-Bautista , Francisco J. Melero
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引用次数: 0

Abstract

Incomplete or missing data in three-dimensional (3D) models can lead to erroneous or flawed renderings, limiting their usefulness in applications such as visualization, geometric computation, and 3D printing. Conventional surface-repair techniques often fail to infer complex geometric details in missing areas. Neural networks successfully address hole-filling tasks in 2D images using inpainting techniques. The combination of surface reconstruction algorithms, guided by the model’s curvature properties and the creativity of neural networks in the inpainting processes, should provide realistic results in the hole completion task. In this paper, we propose a novel method entitled SR-CurvANN (Surface Reconstruction Based on Curvature-Aware Neural Networks) that incorporates neural network-based 2D inpainting to effectively reconstruct 3D surfaces. We train the neural networks with images that represent planar representations of the curvature at vertices of hundreds of 3D models. Once the missing areas have been inferred, a coarse-to-fine surface deformation process ensures that the surface fits the reconstructed curvature image. Our proposal makes it possible to learn and generalize patterns from a wide variety of training 3D models, generating comprehensive inpainted curvature images and surfaces. Experiments conducted on 959 models with several holes have demonstrated that SR-CurvANN excels in the shape completion process, filling holes with a remarkable level of realism and precision.
SR-CurvANN:通过曲率感知神经网络推进三维表面重建
三维(3D)模型中不完整或缺失的数据可能导致错误或有缺陷的渲染,从而限制了它们在可视化、几何计算和3D打印等应用程序中的用途。传统的表面修复技术往往无法推断出缺失区域的复杂几何细节。神经网络成功地解决了在二维图像中使用补孔技术的补孔任务。在模型曲率特性的指导下,结合神经网络在喷漆过程中的创造性,表面重建算法应该在完井任务中提供真实的结果。在本文中,我们提出了一种名为SR-CurvANN(基于曲率感知神经网络的表面重建)的新方法,该方法结合了基于神经网络的二维喷漆来有效地重建三维表面。我们使用代表数百个3D模型顶点曲率的平面表示的图像来训练神经网络。一旦推断出缺失区域,从粗到细的表面变形过程确保表面符合重建的曲率图像。我们的提议使得从各种各样的训练3D模型中学习和推广模式成为可能,从而生成全面的内绘曲率图像和曲面。在959个带有多个孔洞的模型上进行的实验表明,SR-CurvANN在形状补全过程中表现出色,填充孔洞具有显着的真实感和精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computers & Graphics-Uk
Computers & Graphics-Uk 工程技术-计算机:软件工程
CiteScore
5.30
自引率
12.00%
发文量
173
审稿时长
38 days
期刊介绍: Computers & Graphics is dedicated to disseminate information on research and applications of computer graphics (CG) techniques. The journal encourages articles on: 1. Research and applications of interactive computer graphics. We are particularly interested in novel interaction techniques and applications of CG to problem domains. 2. State-of-the-art papers on late-breaking, cutting-edge research on CG. 3. Information on innovative uses of graphics principles and technologies. 4. Tutorial papers on both teaching CG principles and innovative uses of CG in education.
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