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A fractal dimension based optimal wavelet packet analysis technique for classification of meningioma brain tumours

机译:基于分形维数的最优小波包分析技术在脑膜瘤脑肿瘤分类中的应用

摘要

With the heterogeneous nature of tissue texture, using a single resolution approach for optimum classification might not suffice. In contrast, a multiresolution wavelet packet analysis can decompose the input signal into a set of frequency subbands giving the opportunity to characterise the texture at the appropriate frequency channel. An adaptive best bases algorithm for optimal bases selection for meningioma histopathological images is proposed, via applying the fractal dimension (FD) as the bases selection criterion in a tree-structured manner. Thereby, the most significant subband that better identifies texture discontinuities will only be chosen for further decomposition, and its fractal signature would represent the extracted feature vector for classification. The best basis selection using the FD outperformed the energy based selection approaches, achieving an overall classification accuracy of 91.25% as compared to 83.44% and 73.75% for the co-occurrence matrix and energy texture signatures; respectively.
机译:由于组织纹理的异质性,使用单分辨率方法进行最佳分类可能不够。相反,多分辨率小波包分析可以将输入信号分解为一组频率子带,从而有机会在适当的频率信道上表征纹理。提出了一种以分形维数(FD)为树型选择准则的脑膜瘤组织病理学图像最佳碱基选择的自适应最佳碱基算法。因此,将只选择能够更好地识别纹理不连续性的最高有效子带进行进一步分解,其分形特征将代表提取的特征向量以进行分类。使用FD的最佳基础选择优于基于能量的选择方法,实现了91.25%的总体分类精度,而共现矩阵和能量纹理特征的总体分类精度为83.44%和73.75%;分别。

著录项

  • 作者

    Al-Kadi O. S.;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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