A Level Set Method for Image Segmentation in the Presence of Intensity Inhomogeneities With Application to MRI

图像分割 人工智能 聚类分析 分割 初始化 尺度空间分割 分段 基于分割的对象分类 计算机科学 强度映射 模式识别(心理学) 计算机视觉 同质性(统计学) 水平集(数据结构) 强度(物理) 数学 物理 统计 光学 银河系 量子力学 数学分析 红移 程序设计语言
作者
Chunming Li,Rui Huang,Zhaohua Ding,J. Christopher Gatenby,Dimitris N. Metaxas,John C. Gore
出处
期刊:IEEE transactions on image processing [Institute of Electrical and Electronics Engineers]
卷期号:20 (7): 2007-2016 被引量:1020
标识
DOI:10.1109/tip.2011.2146190
摘要

Intensity inhomogeneity often occurs in real-world images, which presents a considerable challenge in image segmentation. The most widely used image segmentation algorithms are region-based and typically rely on the homogeneity of the image intensities in the regions of interest, which often fail to provide accurate segmentation results due to the intensity inhomogeneity. This paper proposes a novel region-based method for image segmentation, which is able to deal with intensity inhomogeneities in the segmentation. First, based on the model of images with intensity inhomogeneities, we derive a local intensity clustering property of the image intensities, and define a local clustering criterion function for the image intensities in a neighborhood of each point. This local clustering criterion function is then integrated with respect to the neighborhood center to give a global criterion of image segmentation. In a level set formulation, this criterion defines an energy in terms of the level set functions that represent a partition of the image domain and a bias field that accounts for the intensity inhomogeneity of the image. Therefore, by minimizing this energy, our method is able to simultaneously segment the image and estimate the bias field, and the estimated bias field can be used for intensity inhomogeneity correction (or bias correction). Our method has been validated on synthetic images and real images of various modalities, with desirable performance in the presence of intensity inhomogeneities. Experiments show that our method is more robust to initialization, faster and more accurate than the well-known piecewise smooth model. As an application, our method has been used for segmentation and bias correction of magnetic resonance (MR) images with promising results.
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