A Robust Scheme for Feature-Preserving Mesh Denoising

IEEE Transactions on Visualization and Computer Graphics(2016)

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摘要
In recent years researchers have made noticeable progresses in mesh denoising, that is, recovering high-quality 3D models from meshes corrupted with noise (raw or synthetic). Nevertheless, these state of the art approaches still fall short for robustly handling various noisy 3D models. The main technical challenge of robust mesh denoising is to remove noise while maximally preserving geometric features. In particular, this issue becomes more difficult for models with considerable amount of noise. In this paper we present a novel scheme for robust feature-preserving mesh denoising. Given a noisy mesh input, our method first estimates an initial mesh, then performs feature detection, identification and connection, and finally, iteratively updates vertex positions based on the constructed feature edges. Through many experiments, we show that our approach can robustly and effectively denoise various input mesh models with synthetic noise or raw scanned noise. The qualitative and quantitative comparisons between our method and the selected state of the art methods also show that our approach can noticeably outperform them in terms of both quality and robustness.
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关键词
computational geometry,mesh generation,feature connection,feature detection,feature edges,feature identification,high-quality 3D model recovery,input mesh models,iterative vertex position update,noise remove,noisy 3D models,noisy mesh input,qualitative analysis,quantitative analysis,raw meshes,raw scanned noise,robust feature-preserving mesh denoising,synthetic meshes,synthetic noise,Mesh denoising,feature operations,feature preserving,robust denoising
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