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Space-frequency weighting of Brushlet transform for texture representation in 3D medical imaging

机译:用于3D医学成像中纹理表示的Brushlet变换的空频加权

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Brushlet expansion based texture representation is an effective tool due to complete partitioning of Fourier space via Space-Frequency Blocks (SFBs), possibility of arbitrary orientation selection and reduced redundancy by utilization of orthogonal basis. It is also shown that reconstruction only with user selected SFBs can enhance desired information. In parallel with these studies, the importance of generating multi-scale combinations of basis functions for texture characterization has been emphasized. Existing approaches use machine learning to find weighted combination of filters inside a predefined set, such that the difference between desired texture and obtained signature is minimized. In this paper, instead of using a limited filter bank, the optimal weights of SFBs in an expansion are determined to extract a desired texture. Accordingly, a novel method is proposed for reconstruction with optimally weighted SFBs. Applications show that proposed learning strategy converges for desired texture patterns and successful extraction can be achieved. Moreover, SFB weighting is shown to outperform SFB selection when 3D visualization of liver from computed tomography is considered.
机译:由于通过空间频率块(SFB)对傅立叶空间进行了完全划分,任意方向选择的可能性以及通过利用正交基减少的冗余,基于小刷扩展的纹理表示是一种有效的工具。还显示出仅利用用户选择的SFB进行的重建可以增强期望的信息。与这些研究同时,强调了为纹理特征生成基函数的多尺度组合的重要性。现有的方法使用机器学习来找到预定义集合内的滤波器的加权组合,从而使所需纹理和所获得的特征之间的差异最小化。在本文中,代替使用有限的滤波器组,确定扩展中SFB的最佳权重以提取所需的纹理。因此,提出了一种用于利用最佳加权的SFB进行重构的新方法。应用表明,提出的学习策略可以收敛到所需的纹理图案,并且可以成功提取。此外,当考虑从计算机断层摄影术对肝脏进行3D可视化时,SFB加权表现优于SFB选择。

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