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Getting a morphological tree of shapes for multivariate images: Paths, traps, and pitfalls

机译:获得多元图像的形状形状树:路径,陷阱和陷阱

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The tree of shapes is a morphological tree that provides an high-level hierarchical representation of the image suitable for many image processing tasks. This structure has the desirable properties to be self-dual and contrast-invariant and describes the organization of the objects through level lines inclusion. Yet it is defined on gray-level while many images have multivariate data (color images, multispectral images.) where information are split across channels. In this paper, we propose some leads to extend the tree of shapes on colors with classical approaches based on total orders, more recent approaches based on graphs and also a new distance-based method. Eventually, we compare these approaches through denoising to highlight their strengths and weaknesses and show the strong potential of the new methods compared to classical ones.
机译:形状树是一种形态树,其提供适合于许多图像处理任务的图像的高级分层表示。 这种结构具有理想的属性,可以是自我双向和对比度的,并通过级别夹杂度描述对象的组织。 然而,它在灰度级上定义,而许多图像具有多变量数据(彩色图像,多光谱图像。)在跨通道中拆分信息。 在本文中,我们提出了一些导致在基于总订单的总订单,基于图表的最近方法以及基于新的方法的更新方法来延伸颜色的颜色树。 最终,我们通过去噪能够突出这些方法来突出他们的优势和缺点,与古典的潜力相比,新方法的强劲潜力。

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