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A new method of threshold and gradient optimization using class uncertainty theory and its quantitative analysis

机译:使用类别不确定性理论及其定量分析一种新的阈值和梯度优化方法及其定量分析

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摘要

The knowledge of thresholding and gradient at different tissue interfaces is of paramount interest in image segmentation and other imaging methods and applications. Most thresholding and gradient selection methods primarily focus on image histograms and therefore, fail to harness the information generated by intensity patterns in an image. We present a new thresholding and gradient optimization method which accounts for spatial arrangement of intensities forming different objects in an image. Specifically, we recognize object class uncertainty, a histogram-based feature, and formulate an energy function based on its correlation with image gradients that characterizes the objects and shapes in a given image. Finally, this energy function is used to determine optimum thresholds and gradients for various tissue interfaces. The underlying theory behind the method is that objects manifest themselves with fuzzy boundaries in an acquired image and that, in a probabilistic sense; intensities with high class uncertainty are associated with high image gradients generally indicating object/tissue interfaces. The new method simultaneously determines optimum values for both thresholds and gradient parameters at different object/tissue interfaces. The method has been applied on several 2D and 3D medical image data sets and it has successfully determined both thresholds and gradients for different tissue interfaces even when some of the thresholds are almost impossible to locate in their histograms. The accuracy and reproducibility of the method has been examined using 3D multi-row detector computed tomography images of two cadaveric ankles each scanned thrice with repositioning the specimen between two scans.
机译:在不同组织接口处的阈值和梯度的知识对于图像分割和其他成像方法和应用是至关重要的。大多数阈值和梯度选择方法主要集中在图像直方图上,因此,未能利用图像中的强度模式产生的信息。我们提出了一种新的阈值和梯度优化方法,其考虑了在图像中形成不同对象的强度的空间排列。具体地,我们认识到对象类不确定性,基于直方图的特征,并基于其与特征在给定图像中的对象和形状的图像梯度的相关性的能量函数。最后,该能量函数用于确定各种组织接口的最佳阈值和梯度。方法背后的潜在理论是对象在获得的图像中以模糊边界表现出来,并且在概率意义上;高阶不确定性的强度与通常指示对象/组织接口的高图像梯度相关联。新方法同时确定不同对象/组织接口的阈值和梯度参数的最佳值。该方法已经在几个2D和3D医学图像数据集上应用,并且即使在其直方图中几乎不可能定位某些阈值时,也已成功确定不同组织接口的阈值和梯度。使用两个尸体脚踝的3D多行检测器计算机断层扫描图像检查了两个尸体脚踝的精度和再现性,每个尸体脚踝都扫描了三次扫描之间的样本。

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    Yinxiao Liu;

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  • 年度 -1
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  • 原文格式 PDF
  • 正文语种 eng
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