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Feature extraction for texture discrimination via random field models with random spatial interaction

机译:通过具有随机空间相互作用的随机场模型进行纹理识别的特征提取

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摘要

In this paper, we attack the problem of distinguishing textured images of real surfaces using small samples. We first analyze experimental data that results from applying ordinary conditional Markov fields. In the face of the disappointing performance of these models, we introduce a random field with spatial interaction that is itself a random variable (usually referred to as a random field in a random environment). For this class of models, we establish the power spectrum and the autocorrelation function as well-defined quantities, and we devise a scheme for the estimation of related parameters. The new set of features that resulted from this approach was applied to real images. Accurate discrimination was observed even for boxes of size 10/spl times/16.
机译:在本文中,我们解决了使用小样本区分真实表面的纹理图像的问题。我们首先分析应用普通条件马尔可夫场得到的实验数据。面对这些模型令人失望的性能,我们引入了一个具有空间相互作用的随机场,该场本身就是一个随机变量(在随机环境中通常称为随机场)。对于此类模型,我们建立了功率谱和自相关函数以及定义明确的数量,并设计了一种用于估计相关参数的方案。这种方法产生的新功能集已应用于真实图像。即使对于尺寸为10 / spl次/ 16的盒子,也能观察到准确的区分。

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