基于特性的应用程序特定区域合并

A. Rydberg, G. Borgefors
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引用次数: 1

摘要

过度分割是各种分割任务中普遍存在的问题。自然场景的自动分割也不例外。本文以农田卫星影像为研究对象,提出了一种解决过分割问题的方法。在许多情况下,农田可以被认为是一个平坦的区域,面积相当大,形状紧凑,区域边界直,因为它是一个人造的物体。在合并过度分割的区域时,我们使用区域形状和光谱信息将农田划分为单个农田单元。将该方法的结果与两种不同的分割方法以及解释的场边界进行了比较。结果表明,任务特定知识为区域合并过程的决策步骤增加了重要的信息。使用我们的方法,大约70%的边缘被分类在距离地面真实边缘一个像素的范围内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature based merging of application specific regions
Over-segmentation is a common problem for all kinds of segmentation tasks. Automated segmentation of natural scenes is no exception. This paper proposes a solution to the over-segmentation problem, with the emphasis on satellite images of farmland. In many cases, an agricultural field can be considered as a flat region having a rather large area, a compact shape, and straight region boundaries because it is a man-made object. Our approach for dividing farmland into individual field units uses region shape, as well as spectral information, when merging over-segmented regions. The results from the presented method are compared to two different methods of segmentation as well as interpreted field boundaries. The results show that task-specific knowledge adds important information to the decision step for the merging procedure of regions. About 70% of the edges are classified within one pixel away from the ground truth edges using our methods.
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