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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Classification of rotated and scaled textured images using Gaussian Markov random field models
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Classification of rotated and scaled textured images using Gaussian Markov random field models

机译:使用高斯马尔可夫随机场模型对旋转和缩放后的纹理图像进行分类

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Consideration is given to the problem of classifying a test textured image that is obtained from one of C possible parent texture classes, after possibly applying unknown rotation and scale changes to the parent texture. The training texture images (parent classes) are modeled by Gaussian Markov random fields (GMRFs). To classify a rotated and scaled test texture, the rotation and scale changes are incorporated in the texture model through an appropriate transformation of the power spectral density of the GMRF. For the rotated and scaled image, a bona fide likelihood function that shows the explicit dependence of the likelihood function on the GMRF parameters, as well as on the rotation and scale parameters, is derived. Although, in general, the scaled and/or rotated texture does not correspond to a finite-order GMRF, it is possible nonetheless to write down a likelihood function for the image data. The likelihood function of the discrete Fourier transform of the image data corresponds to that of a white nonstationary Gaussian random field, with the variance at each pixel (i,j) being a known function of the rotation, the scale, the GMRF model parameters, and (i,j). The variance is an explicit function of the appropriately sampled power spectral density of the GMRF. The estimation of the rotation and scale parameters is performed in the frequency domain by maximizing the likelihood function associated with the discrete Fourier transform of the image data. Cramer-Rao error bounds on the scale and rotation estimates are easily computed. A modified Bayes decision rule is used to classify a given test image into one of C possible texture classes. The classification power of the method is demonstrated through experimental results on natural textures from the Brodatz album.
机译:在对父纹理可能应用未知的旋转和缩放变化之后,考虑对从C种可能的父纹理类别之一获得的测试纹理图像进行分类的问题。训练纹理图像(父类)由高斯马尔可夫随机场(GMRF)建模。为了对旋转和缩放的测试纹理进行分类,可通过适当转换GMRF的功率谱密度,将旋转和缩放变化合并到纹理模型中。对于旋转和缩放后的图像,导出了真实的似然函数,该函数显示了似然函数对GMRF参数以及旋转和缩放参数的显式依赖。尽管通常来说,缩放和/或旋转的纹理不对应于有限阶GMRF,但是仍然有可能记下图像数据的似然函数。图像数据的离散傅里叶变换的似然函数对应于白色非平稳高斯随机场的似然函数,每个像素(i,j)的方差是旋转,比例,GMRF模型参数的已知函数,和(i,j)。该变化是GMRF的适当采样功率谱密度的显式函数。通过最大化与图像数据的离散傅立叶变换关联的似然函数,可以在频域中执行旋转和缩放参数的估计。刻度和旋转估计的Cramer-Rao误差范围很容易计算。修改后的贝叶斯决策规则用于将给定的测试图像分类为C种可能的纹理类别之一。通过从Brodatz专辑获得的自然纹理的实验结果证明了该方法的分类能力。

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