通过检验协方差矩阵和均值向量对不同光照条件下的纹理进行分类

M. H. Shariat, M. Neinavaie, M. Derakhtian, S. Gazor
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引用次数: 1

摘要

纹理分类是图像处理中的一个重要环节。本文考虑了基于协方差矩阵和均值向量检验的纹理分类问题。这使我们能够在不需要训练数据的情况下确定不同图像的类别。为了对多幅图像进行分类,导出了广义似然比(GLR)检验。为了使分类对光照变化具有鲁棒性,我们假设一组中不同图像的均值可以相差一个常数值。因此,所提出的检验对于每一组观测值的平均值的恒定差异是不变的。计算机仿真也验证了该分类器处理不同光照条件下图像的有效性。
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Texture classification in different illumination conditions via testing the covariance matrices and mean vectors
Texture classification is of utmost importance in the image processing. In this paper the problem of texture classification is considered based on testing the covariance matrices and mean vectors. This allows us to determine the class of different images without the necessity of the training data. The generalized likelihood ratio (GLR) test is derived in order to classify several images. To make the classification robust to illuminance changes, we assume that the means of different images in one group, could differ by a constant value. Consequently the proposed test is invariant to the constant difference in the means of observations in each group. Computer simulations also confirm the efficiency of the classifier in dealing with the images with different illumination conditions.
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