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Skewed alpha-stable distribution for natural texture modeling and segmentation in contourlet domain

机译:Contourlet域的自然纹理建模和分割的偏斜α稳定分布

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Abstract Texture modeling is a very useful tool in image analysis. This model can be used in texture segmentation, denoising or texture synthesis. In this work, alpha-stable distribution has been proposed to model and segment textured images in contourlet domain. Contourlet transform’s ability to extract texture features in different scales and directions combined with alpha-stable distribution’s modeling capabilities prove to be an effective method for texture feature extraction. Kolmogorov–Smirnov distance has been used to evaluate how well the proposed distribution fits to the image in the contourlet domain. The performance of the proposed features on image segmentation has been also compared with that of features extracted using different texture analysis methods in the presence of noise. Experimental results have demonstrated the superior performance of the proposed features and their robust performance in the presence of noise.
机译:摘要纹理建模是图像分析中的一个非常有用的工具。该模型可用于纹理分割,去噪或纹理合成。在这项工作中,已经提出了α稳定的分布在Contourlet域中的模型和段纹理图像模拟和段。 Contourlet变换在不同尺度和方向上提取纹理特征的能力与alpha稳定的分布的建模功能相结合,证明是纹理特征提取的有效方法。 Kolmogorov-Smirnov距离已被用来评估所提出的分布在Contourlet域中的图像中的应用程度。还与在噪声的存在下使用不同纹理分析方法提取的特征的特征进行了拟议特征的性能。实验结果表明,在存在噪声的情况下,所提出的特征的优异性能及其稳健性能。

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