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Learning Basic Patterns from Repetitive Texture Surfaces Under Non-rigid Deformations

机译:在非刚性变形下,从重复纹理表面学习基本模式

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In this paper, we approach the problem of determining the basic components from repetitive textured surfaces undergoing free-form deformations. Traditional methods for texture modeling are usually based on measurements performed on fronto-parallel planar surfaces. Recently, affine invariant descriptors have been proposed as an effective way to extract local information from non-planar texture surfaces. However, affine transformations are unable to model local image distortions caused by changes in surface curvature. Here, we propose a method for selecting the most representative candidates for the basic texture elements of a texture field while preserving the descriptors' affine invariance requirement. Our contribution in this paper is twofold. First, we investigate the distribution of extracted affine invariant descriptors on a nonlinear manifold embedding. Secondly, we describe a learning procedure that allows us to group repetitive texture elements while removing candidates presenting high levels of curvature-induced distortion. We demonstrate the effectiveness of our method on a set of images obtained from man-made texture surfaces undergoing a range of non-rigid deformations.
机译:在本文中,我们探讨了从经历自由形状变形的重复纹理表面确定基本组件的问题。用于纹理建模的传统方法通常基于在前平行平面表面上进行的测量。最近,已经提出了仿射不变的描述符作为从非平面纹理表面中提取本地信息的有效方法。然而,仿射变换不能建模由表面曲率的变化引起的局部图像失真。在这里,我们提出了一种选择用于为纹理字段的基本纹理元素选择最代表性的候选者的方法,同时保留描述符的仿佛不变性要求。我们本文的贡献是双重的。首先,我们调查在非线性歧管嵌入上提取的仿射不变描述符的分布。其次,我们描述了一种学习过程,其允许我们分组重复纹理元素,同时去除呈现高水平的曲率引起的失真的候选。我们展示了我们对从经历了一系列非刚性变形的人造纹理表面获得的一组图像上的方法的有效性。

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