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Medical Image Segmentation Based On an Improved 2D Entropy

机译:基于改进的2D熵的医学图像分割

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Medical image segmentation is the basis of medical image three-dimension reconstruction. The accuracy of image segmentation directly affects the results of image 3D reconstruction. Medical image is a kind of grayscale image. In order to adequately utilize gray information and spatial information of image, the traditional 2D gray histogram is improved and forms the 2D D- value attribute gray histogram. Computation method of average gray and 2D entropy is improved. Use spatial information as a substitute for gray probability to compute entropy. Computation of entropy is based on D-value attribute gray histogram and created spatial different attribute information entropy (SDAIVE). In experiment, a series of head CT images are segmented. Experimental results show that improved threshold method can better segment noise image. This method has strong anti-noise capability and clear segmentation results.
机译:医学图像分割是医学图像三维重建的基础。图像分割的准确性直接影响图像3D重建的结果。医学图像是一种灰度图像。为了充分利用图像的灰度信息和空间信息,传统的2D灰度直方图得到改进并形成2D D值属性灰度直方图。改善了平均灰度和2D熵的计算方法。使用空间信息作为计算熵的灰度概率。熵计算基于D值属性灰度直方图并创建了空间不同的属性信息熵(SDAive)。在实验中,将一系列头部CT图像分段。实验结果表明,改进的阈值方法可以更好地段噪声图像。该方法具有很强的抗噪声能力和明确的分段结果。

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