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A QUANTITATIVE EVALUATION MEASURE FOR 3D BIOMEDICAL IMAGE SEGMENTATION

机译:3D生物医学图像分割的定量评估措施

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Modelling and quantification of biomedical data often requires segmentation as the pre-process where qualitative and quantitative evaluation measures of biomedical image segmentation play a crucial role in image analysis. The existing two-dimensional (2D) image segmentation evaluation measure and comparison techniques provide limited measurements when applied to three-dimensional (3D) image array corresponding to a stack of 2D slices and are not as practical. In this paper, we propose an approach to evaluate the quality and the accuracy of 3D image segmentation results using similarity indices based on both overlapping volume and edge based techniques. While the edge based technique was more sensitivity in detecting segmentation misclassifications, it was affected by the orthogonal data set (axial, coronal or sagittal) used for evaluation. Thus it is important for segmentation measures to consider the 3D data set as a whole, rather than a stack of independent 2D images.
机译:生物医学数据的建模和量化通常需要分割作为预处理,其中生物医学图像分割的定性和定量评估措施在图像分析中发挥着重要作用。现有的二维(2D)图像分割评估测量测量测量测量测量和比较技术在应用于对应于2D片的堆叠的三维(3D)图像阵列时提供有限的测量值并且不像那样实用。在本文中,我们提出了一种使用基于重叠体积和边缘技术的相似性指数来评估3D图像分割结果的质量和准确性的方法。虽然基于边缘的技术在检测分割错误分类方面的敏感性更为敏感,但它受到用于评估的正交数据集(轴向,冠状或矢状)的影响。因此,分割措施是考虑整个3D数据的分割措施,而不是一堆独立的2D图像。

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