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Edge-preserving Multiscale Image Decomposition based on Local Extrema

机译:基于局部极值的边缘保持多尺度图像分解

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摘要

We propose a new model for detail that inherently captures oscillations, a key property that distinguishes textures from individual edges. Inspired by techniques in empirical data analysis and morphological image analysis, we use the local extrema of the input image to extract information about oscillations: We define detail as oscillations between local minima and maxima. Building on the key observation that the spatial scale of oscillations are characterized by the density of local extrema, we develop an algorithm for decomposing images into multiple scales of superposed oscillations.Current edge-preserving image decompositions assume image detail to be low contrast variation. Consequently they apply filters that extract features with increasing contrast as successive layers of detail. As a result, they are unable to distinguish between high-contrast, fine-scale features and edges of similar contrast that are to be preserved. We compare our results with existing edge-preserving image decomposition algorithms and demonstrate exciting applications that are made possible by our new notion of detail.
机译:我们为细节提出了一个新模型,该模型固有地捕获了振动,这是将纹理与各个边缘区分开的关键属性。受经验数据分析和形态图像分析技术的启发,我们使用输入图像的局部极值来提取有关振荡的信息:我们将细节定义为局部最小值和最大值之间的振荡。基于关键的振荡空间尺度以局部极值密度为特征的观点,我们开发了一种将图像分解为多个尺度的叠加振荡的算法。当前保留边缘的图像分解假设图像细节为低对比度变化。因此,他们应用了滤镜,这些滤镜提取的对比度不断增加的要素作为连续的细节层。结果,他们无法区分要保留的高对比度,精细比例的特征和相似对比度的边缘。我们将结果与现有的保留边缘的图像分解算法进行比较,并演示了通过我们的新细节概念而实现的令人兴奋的应用程序。

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