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Image-Based 3D MESH Denoising Through A Block Matching 3D Convolutional Neural Network Filtering Approach

机译:通过块匹配3D卷积神经网络滤波方法进行基于图像的3D MESH去噪

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摘要

Throughout the years, several works have been proposed for 3D mesh denoising. Nevertheless, despite their reconstruction quality, there are still challenges related to the preservation of the fine surface features. Motivated by the impressive results of image denoising by 3D transform-domain collaborative filtering (CF), we extend it to 3D mesh denoising. CF is also capable of revealing the finest details shared by grouped blocks while preserving at the same time the unique features of each block. A new promising approach suggests unrolling the computational pipeline of CF into a convolutional neural network (CNN) structure increasing significantly the efficiency of this solution. In this paper, we successfully extend and apply this method to 3D meshes making a transition from face normals to pixels. Extensive evaluation studies carried out using a variety of 3D meshes verify that the proposed approach achieves plausible reconstruction outputs and provides very promising results.
机译:多年来,已经提出了一些用于3D网格降噪的工作。尽管如此,尽管它们具有重建质量,但是仍然存在与保存精细表面特征有关的挑战。受3D变换域协作过滤(CF)图像去噪的令人印象深刻的结果的激励,我们将其扩展到3D网格去噪。 CF还能够揭示分组块共享的最佳细节,同时保留每个块的独特功能。一种新的有前途的方法建议将CF的计算流水线展开到卷积神经网络(CNN)结构中,从而显着提高该解决方案的效率。在本文中,我们成功地将此方法扩展并应用到3D网格中,从而实现了从面法线到像素的过渡。使用各种3D网格进行的广泛评估研究证明,所提出的方法可以实现合理的重建输出并提供非常有希望的结果。

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