Semi-Automatic Segmentation of Fibrous Liver Tissue

P. Andruszkiewicz, C. Boldak, J. Jaroszewicz
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引用次数: 1

Abstract

This article presents a semi-automatic segmentation of the fibrous liver tissue in the in-vivo liver biopsy color images. The segmentation is performed using a tree-based classifier, with decision rules as tree leaves and binary operators (AND, OR) as tree nodes. Several image's local characteristics have been exploited, based on the image points' intensity levels, as well as taken from the texture analysis domain (fractal dimension, FFT, Gabor filters). Their effectiveness concerning quality of extraction has been compared using real clinical images with a manual delimitation given by physicians, as a reference. A user friendly application has been developed which enables the operator to interactively create and store the classifiers. It also offers to a physician a predefined set of the best found classifiers, to allow him an effective work in his every-day practice. The method is semi-automatic - it still leaves to the operator, beside the classifier choice, a possibility to manually (with the mouse) adjust the main parameter (s) which visually, on the fly, grows/shrinks the extracted fibrous region.
肝纤维组织的半自动分割
本文提出了一种活体肝活检彩色图像中纤维性肝组织的半自动分割方法。使用基于树的分类器执行分割,将决策规则作为树的叶子,将二进制操作符(and, OR)作为树的节点。基于图像点的强度水平,以及从纹理分析域(分形维数,FFT, Gabor滤波器)中提取了几个图像的局部特征。它们在提取质量方面的有效性已经用真实的临床图像与医生给出的手动划分进行了比较,作为参考。开发了一个用户友好的应用程序,使操作员能够交互式地创建和存储分类器。它还为医生提供了一套预定义的最佳分类器,使他能够在日常实践中有效地工作。该方法是半自动的-它仍然留给操作员,除了分类器的选择,一个可能手动(用鼠标)调整主要参数,视觉上,在飞行中,生长/收缩提取的纤维区域。
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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