基于线性预测和神经网络的纹理图像自适应分割

S. Kollias, L. Sukissian
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引用次数: 1

摘要

提出了一种用于纹理图像分类和分割的自适应技术。该技术使用有效的最小二乘算法对二维自回归纹理模型进行递归估计,并使用神经网络对模型进行递归分类。使用具有固定但随空间变化的互连权值的网络来最佳地选择这些模型的小代表性集,而使用具有自适应权值的网络进行适当训练并用于递归地对图像进行分类和分割。提出了对后一种网络结构的在线修改,用于分割包含没有先验信息的纹理的图像。实验结果表明,该方法能够有效地对纹理图像进行分类和分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive segmentation of textured images using linear prediction and neural networks
An adaptive technique for classifying and segmenting textured images is presented. This technique uses an efficient least squares algorithm for recursive estimation of two-dimensional autoregressive texture models and neural networks for recursive classification of the models. A network with fixed, but space-varying, interconnection weights is used to optimally select a small representative set of these models, while a network with adaptive weights is appropriately trained and used to recursively classify and segment the image. An online modification of the latter network architecture is proposed for segmenting images that comprise textures for which no prior information exists. Experimental results are given which illustrate the ability of the method to classify and segment textured images in an effective way.<>
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