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基于稳健估计和彩色活动轮廓模型的无监督分割

Unsupervised segmentation based on robust estimation and color active contour models.

作者信息

Yang Lin, Meer Peter, Foran David J

机构信息

Department of Electrical and Computer Engineering, Rutgers University, Piscataway, NJ 08854, USA.

出版信息

IEEE Trans Inf Technol Biomed. 2005 Sep;9(3):475-86. doi: 10.1109/titb.2005.847515.

Abstract

One of the most commonly used clinical tests performed today is the routine evaluation of peripheral blood smears. In this paper, we investigate the design, development, and implementation of a robust color gradient vector flow (GVF) active contour model for performing segmentation, using a database of 1791 imaged cells. The algorithms developed for this research operate in Luv color space, and introduce a color gradient and L2E robust estimation into the traditional GVF snake. The accuracy of the new model was compared with the segmentation results using a mean-shift approach, the traditional color GVF snake, and several other commonly used segmentation strategies. The unsupervised robust color snake with L2E robust estimation was shown to provide results which were superior to the other unsupervised approaches, and was comparable with supervised segmentation, as judged by a panel of human experts.

摘要

如今最常用的临床检测之一是对外周血涂片进行常规评估。在本文中,我们使用一个包含1791个成像细胞的数据库,研究了一种用于分割的稳健颜色梯度向量流(GVF)主动轮廓模型的设计、开发和实现。为该研究开发的算法在Luv颜色空间中运行,并将颜色梯度和L2E稳健估计引入传统的GVF蛇形模型。将新模型的准确性与使用均值漂移方法、传统颜色GVF蛇形模型以及其他几种常用分割策略的分割结果进行了比较。由一组人类专家判断,具有L2E稳健估计的无监督稳健颜色蛇形模型显示出比其他无监督方法更优的结果,并且与有监督分割相当。

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