A Novel Approach of Multiple Objects Segmentation Based on Graph Cut

Jiyang Dong, Jian Xue, Shuqiang Jiang, K. Lu
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引用次数: 2

Abstract

Segmentation is a very crucial step in many applications. Actually, there are often more than one object to be segmented in an image or a video. Taking the lung images as an example, pulmonary lesions area and lung parenchyma area are both important basis for a doctor to make diagnoses. Due to the fact that lung lesion areas and lung tissues have close gray values in the image, and the diversity, irregularity and location uncertainty of pulmonary lesions, traditional segmentation methods cannot segment objects of interest accurately, nor can extract them at the same time. In this paper, a novel approach is proposed for multiple objects segmentation based on Graph Cut. The algorithm introduces a multi-layers graph structure to represent different regions from inside to outside in an image. Besides, the foreground and background are modeled by Gaussian Mixture Models (GMMs) which can describe the gray distributions of them accurately. Then the weights of parts of links in the graph can be calculated by the probability distribution of the models. To solve the problem of boundaries leakage when two objects with similar gray value are in close proximity, a shape constraint is added to the energy function. The segmentation is achieved by max-flow/min-cut and all of the objects can be obtained. Experiment results demonstrate that the proposed method in this paper can deal with the CT images of lung with pathologies, and has accuracy and robustness.
一种基于图割的多目标分割新方法
在许多应用中,分割是非常关键的一步。实际上,在图像或视频中通常有多个对象需要分割。以肺部图像为例,肺病变区域和肺实质区域都是医生进行诊断的重要依据。由于肺部病变区域和肺组织在图像中具有相近的灰度值,以及肺部病变的多样性、不规则性和位置的不确定性,传统的分割方法不能准确分割感兴趣的目标,也不能同时提取目标。本文提出了一种基于图割的多目标分割方法。该算法引入多层图结构,从内到外表示图像中的不同区域。采用高斯混合模型(Gaussian Mixture Models, GMMs)对前景和背景进行建模,可以准确地描述前景和背景的灰度分布。然后通过模型的概率分布计算图中各环节的权重。在能量函数中加入形状约束,解决灰度值相近的两个物体近距离接触时的边界泄漏问题。采用max-flow/min-cut分割,可以得到所有的目标。实验结果表明,本文提出的方法能够处理带有病变的肺部CT图像,具有较好的准确性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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