基于线性模糊空间多边形的图像分割与特征提取

D. Obradovic, Z. Konjovic, E. Pap, Marko Jocic
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引用次数: 5

摘要

本文提出了一种新的包含不精确区域的二维图像区域分割和特征提取模型和算法。区域建模分为两个阶段。在第一阶段,将一个区域表示为经典模糊集,在第二阶段,将得到的模糊集近似为一个模糊多边形,另一个模糊集的边界表示为线性模糊空间中的模糊点数组。第一阶段模糊集的隶属度函数由前馈神经网络在像素特征向量集合上训练表示。基于像素邻域的二维小波变换形成特征向量模型。通过DICOM二维医学图像区域直径的计算实例,说明了该模型和算法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear fuzzy space polygon based image segmentation and feature extraction
In this paper we propose a new model and algorithm for region segmentation and feature extraction from 2D images containing imprecise regions. Region modeling is done in two phases. In the first phase a region is represented as a classical fuzzy set, and in second phase the obtained fuzzy set is approximated by a fuzzy polygon, another fuzzy set whose borders are represented as an array of fuzzy points in linear fuzzy space. Membership functions for the fuzzy set in the first phase are represented by feed forward neural network trained on the set consisting of pixels' feature vectors. The feature vector model is formed based on 2D wavelet transformation of pixel's neighborhood. Utilization of the model and algorithm is demonstrated through the example of calculating region diameter in DICOM 2D medical images.
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