基于模糊ARTMAP的自然纹理分类技术

D. Charlampidis, T. Kasparis, M. Georgiopoulos, J. Rolland
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引用次数: 4

摘要

描述了一种基于图像滤波、分形维数(FD)和模糊ARTMAP神经网络(FAMNN)的纹理灰度图像分类方法。基于原始图像的12个滤波版本,使用定向Gabor滤波器计算12个FD特征。特征在一个窗口中计算,并映射到该窗口的中心像素。我们实现了模糊ARTMAP测试阶段的一个变体,在存在噪声的情况下,它表现出优于标准模糊ARTMAP和1-近邻(1-NN)方法的性能。使用从20种不同纹理中提取的图案进行训练。本文还对一个测试集的分类性能进行了研究。分割结果也说明了分类算法及其指定的参数是足够的,可以在同一图像中识别多个纹理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fuzzy ARTMAP based classification technique of natural textures
Describes an approach to the classification of textured gray-scale images using a technique based on image filtering, the fractal dimension (FD) and a fuzzy ARTMAP neural network (FAMNN). 12 FD features are computed based on 12 filtered versions of the original image using directional Gabor filters. Features are computed in a window and mapped to the central pixel of this window. We implemented a variation of the testing phase of a fuzzy ARTMAP that exhibited a performance that was superior to the standard fuzzy ARTMAP and the 1-nearest neighbor (1-NN) method in the presence of noise. Training was performed using patterns that were extracted from 20 different textures. The classification performance is also studied with respect to a testing set. Segmentation results are also presented to illustrate that the classification algorithm and its specified parameters are adequate so that more than one texture can be identified in the same image.
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