3D构图精美的图片

Longin Jan Latecki
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引用次数: 0

摘要

通过分段图像,我们指的是一个数字图像,其中每个点被分配一个唯一的标签,表明它所属的对象。通过分割图像的前景(对象),我们指的是我们想要分析其属性的对象,通过背景,我们指的是数字图像的所有其他对象。如果对3D分割图像的前景使用一个邻接关系(例如,6邻接关系),对背景使用不同的邻接关系(例如,26邻接关系),那么交换前景和背景可以改变数字图像的连接分量。因此,前景和背景的选择对于后续分析的结果(如对象分组)至关重要,特别是在分析开始时不清楚什么构成前景和什么构成背景的情况下,因为这种选择立即决定了数字图像的连接组件。将定义一类特殊的分段数字3D图像,称为“构图良好的图像”。构图良好的图片具有非常好的主题和几何特性;特别是,每个连通分量的边界都是一个约当曲面,并且在一个构造良好的图像中只有一种连通分量,因为6-、14-、18-和26-连通分量是相等的。这意味着,对于一张构图良好的数码照片,前景和背景的选择对随后的分析结果并不重要。此外,对组成良好的数字图像的连续模拟的一个非常自然的定义导致了表面的规则性质。这使我们能够给出三维jordan - browwer分离定理的数字版本的简单证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Well-Composed Pictures

By asegmentedimage, we mean a digital image in which each point is assigned a unique label that indicates the object to which it belongs. By the foreground (objects) of a segmented image, we mean the objects whose properties we want to analyze and by the background, all the other objects of a digital image. If one adjacency relation is used for the foreground of a 3D segmented image (e.g., 6-adjacency) and a different relation for the background (e.g., 26-adjacency), then interchanging the foreground and the background can change the connected components of the digital picture. Hence, the choice of foreground and background is critical for the results of the subsequent analysis (like object grouping), especially in cases where it is not clear at the beginning of the analysis what constitutes the foreground and what the background, since this choice immediately determines the connected components of the digital picture. A special class of segmented digital 3D pictures called “well-composed pictures” will be defined. Well-composed pictures have very nice topical and geometrical properties; in particular, the boundary of every connected component is a Jordan surface and there is only one type of connected component in a well-composed picture, since 6-, 14-, 18-, and 26-connected components are equal. This implies that for a well-composed digital picture, the choice of the foreground and the background is not critical for the results of the subsequent analysis. Moreover, a very natural definition of a continuous analog for well-composed digital pictures leads to regular properties of surfaces. This allows us to give a simple proof of a digital version of the 3D Jordan–Brouwer separation theorem.

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