Texture feature neural classifier for remote sensing image retrieval systems

M. P. Martins, L. Guimarães, Leila Maria Garcia Fonseca
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引用次数: 11

Abstract

Texture information is useful for image data browsing and retrieval. The goal of this paper is to present a texture classification system for remote sensing images aimed at the administration of large collections of those images. The proposed classifier is a hybrid system composed by an unsupervised neural network and a supervised one. Starting from a small portion of the image (pattern) the system should recognize the most similar class to a pattern in a database as well as to identify images that contain similar patterns. The texture feature vectors used to characterize the patterns are obtained from the images processed by a bank of Gabor filters. Experimental results using textures of the Brodatz album, multi-spectral and radar images are presented.
遥感图像检索系统的纹理特征神经分类器
纹理信息对图像数据的浏览和检索非常有用。本文的目标是提出一个遥感图像纹理分类系统,旨在管理这些图像的大集合。该分类器是由一个无监督神经网络和一个有监督神经网络组成的混合系统。从图像(模式)的一小部分开始,系统应该识别与数据库中模式最相似的类,并识别包含相似模式的图像。通过一组Gabor滤波器对图像进行处理,得到用于特征化的纹理特征向量。给出了基于Brodatz相册、多光谱图像和雷达图像纹理的实验结果。
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