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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >SEGMENTATION OF RANGE IMAGES VIA DATA FUSION AND MORPHOLOGICAL WATERSHEDS
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SEGMENTATION OF RANGE IMAGES VIA DATA FUSION AND MORPHOLOGICAL WATERSHEDS

机译:通过数据融合和形态学水域对范围图像进行分段

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摘要

As in 2-D (in two-dimensional) computer vision, segmentation is one of the most important processes in 3-D (three-dimensional) vision. The recent availability of cost-effective range imaging devices has simplified the problem of obtaining 3-D information directly from a scene. Range images are characterized by two principal types of discontinuities: step edges that represent discontinuities in depth and roof(or trough) edges that represent discontinuities in the direction of surface normals. A Gaussian weighted least-squares technique is developed for extracting these two types of edges from rang images. Edge extraction is then followed by data fusion to form a single edge map that incorporates discontinuities in both depth and surface normals. Edge maps serve as the input to a segmentation algorithm based on morphological watersheds. It is demonstrated by extensive experimentation, using synthetic and real range image data, that each of these three processes contributes to yield rugged and consistent segmentation results. Copyright (C) 1996 Pattern Recognition Society. [References: 22]
机译:像在二维(二维)计算机视觉中一样,分割是3-D(三维)视觉中最重要的过程之一。成本有效的范围成像设备的最新可用性简化了直接从场景获得3-D信息的问题。距离图像的特征在于不连续性的两种主要类型:代表深度不连续性的阶梯边缘和代表表面法线方向不连续性的屋顶(或低谷)边缘。开发了一种高斯加权最小二乘技术,用于从测距图像中提取这两种类型的边缘。然后在边缘提取之后进行数据融合,以形成一个单一的边缘图,该图合并了深度和表面法线中的不连续性。边缘图作为基于形态学分水岭的分割算法的输入。通过使用合成和真实范围图像数据进行的广泛实验证明,这三个过程中的每一个都有助于产生坚固且一致的分割结果。版权所有(C)1996模式识别学会。 [参考:22]

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