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Biomedical image texture analysis based on high-order fractals

机译:基于高阶分形的生物医学图像纹理分析

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Since the fractal dimension alone is not sufficient to characterize natural texture, we explore higher order geometry to accurately identify texture in biomedical images. The calculation of the fractal dimension set is based on the texture description: known as the Pseudo Matrix of the Fractal (PMF). In our research, the variants of the PMF are tested, a set of the fractal parameters are defined, and different discriminant functions are investigated. A new approach to texture classification is described. Using vectors derived from the PMF, the inner products of these normalized vectors obtained from the training groups and the test image form the measures for classification. This method is easily implemented and produces reliable classification results. The new algorithm significantly simplifies the calculation of the fractal dimension set, and the classification of texture in medical images becomes more sensitive and specific. Preliminary results have demonstrated an improved accuracy in classification on one group of eight types of realistic texture data and one set of MRI brain data.
机译:由于单独的分形尺寸不足以表征自然质地,因此我们探索高阶几何,以准确地识别生物医学图像中的纹理。分形维数集的计算基于纹理描述:称为分形(PMF)的伪矩阵。在我们的研究中,测试PMF的变型,定义了一组分形参数,并研究了不同的判别功能。描述了一种新的纹理分类方法。使用从PMF的载体,从训练组获得的这些归一化载体的内在产品和测试图像形成分类的措施。这种方法很容易实现并产生可靠的分类结果。新算法显着简化了分形维数集的计算,医学图像中纹理的分类变得更加敏感和特定。初步结果表明,在一组八种类型的现实纹理数据和一组MRI脑数据上的分类中提高了提高的准确性。

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