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Convex Hodge Decomposition of Image Flows

机译:图像流的凸霍奇分解

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The total variation (TV) measure is a key concept in the field of variational image analysis. Introduced by Rudin, Osher and Fatemi in connection with image denoising, it also provides the basis for convex structure-texture decompositions of image signals, image inpainting, and for globally optimal binary image segmentation by convex functional minimization. Concerning vector-valued image data, the usual definition of the TV measure extends the scalar case in terms of the L~1-norm of the gradients. In this paper, we show for the case of 2D image flows that TV reg-ularization of the basic flow components (divergence, curl) leads to a mathematically more natural extension. This regularization provides a convex decomposition of motion into a richer structure component and texture. The structure component comprises piecewise harmonic fields rather than piecewise constant ones. Numerical examples illustrate this fact. Additionally, for the class of piecewise harmonic flows, our regular-izer provides a measure for motion boundaries of image flows, as does the TV-measure for contours of scalar-valued piecewise constant images.
机译:总变化量(TV)度量是变化图像分析领域中的关键概念。由Rudin,Osher和Fatemi结合图像去噪引入,它还为图像信号的凸结构纹理分解,图像修复以及通过凸函数最小化实现全局最佳二值图像分割提供了基础。关于矢量值图像数据,TV量度的常规定义根据梯度的L〜1范数扩展了标量情况。在本文中,我们显示了对于2D图像流的情况,基本流分量(散度,卷曲)的电视规则化导致了数学上更自然的扩展。这种正则化将运动凸出分解为更丰富的结构成分和纹理。结构分量包括分段谐波场,而不是分段常数场。数值示例说明了这一事实。此外,对于分段谐波流的类别,我们的正则化器为图像流的运动边界提供了一种度量,就像对标量值的分段常数图像的轮廓进行TV度量一样。

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