一种分层距离图像分割算法的实验比较

G. Osorio, P. Boulanger, F. Prieto
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引用次数: 6

摘要

本文提出了一种用贝塞尔多项式表示的连续区域分割距离图像的新算法。许多分割算法存在的主要问题是难以同时准确检测出大面积连续区域及其边界位置。本文采用贝叶斯框架,通过区域生长过程确定大的连续区域。在此过程之后,从提取的参数多项式的相互相交中计算每个区域边界的精确描述,然后使用梯度矢量流算法对这个新边界进行关闭和近似。该算法不仅能够分割多面体物体,还可以通过创建与大多数CAD系统兼容的封闭修整贝塞尔曲面网络来分割雕刻表面。实验结果表明,该方法可以显著改善区域边界的定位和闭合。在本文中,我们的算法与文献中最著名的算法进行了系统的比较,以突出其性能。
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An experimental comparison of a hierarchical range image segmentation algorithm
This paper describe a new algorithm to segment range images into continuous regions represented by Bezier polynomials. The main problem in many segmentation algorithms is that it is hard to accurately detect at the same time large continuous regions and their boundary location. In this paper, a Bayesian framework is used to determine through a region growing process large continuous regions. Following this process, an exact description of the boundary of each region is computed from the mutual intersection of the extracted parametric polynomials followed by a closure and approximation of this new boundary using a gradient vector flow algorithm. This algorithm is capable of segmenting not only polyhedral objects but also sculptured surfaces by creating a network of closed trimmed Bezier surfaces that are compatible with most CAD systems. Experimental results show that significant improvement of region boundary localization and closure can be achieved. In this paper, a systematic comparison of our algorithm to the most well known algorithms in the literature is presented to highlight its performance.
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