基于半完整性的图像共分割算法。

Lopamudra Mukherjee, Vikas Singh, Charles R Dyer
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引用次数: 0

摘要

我们研究了共分割问题,其目标是从一对图像中分割相同的物体(即区域)。每个图像的分割可以使用带有附加约束的分区/分割函数进行,该函数寻求使分割区域的直方图(基于强度和纹理特征)相似。在线性化和调整后,使用马尔科夫随机场(MRF)能量项对图像进行同时分割,并使用平方L(2)(而不是L(1))距离的直方图一致性要求,产生具有一些有趣组合特性的优化模型。我们讨论了这些性质,它们与最近在计算机视觉中引入的某些松弛策略密切相关。最后,给出了该方法的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Half-Integrality based Algorithms for Cosegmentation of Images.

We study the cosegmentation problem where the objective is to segment the same object (i.e., region) from a pair of images. The segmentation for each image can be cast using a partitioning/segmentation function with an additional constraint that seeks to make the histograms of the segmented regions (based on intensity and texture features) similar. Using Markov Random Field (MRF) energy terms for the simultaneous segmentation of the images together with histogram consistency requirements using the squared L(2) (rather than L(1)) distance, after linearization and adjustments, yields an optimization model with some interesting combinatorial properties. We discuss these properties which are closely related to certain relaxation strategies recently introduced in computer vision. Finally, we show experimental results of the proposed approach.

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CiteScore
43.50
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