基于h -最小变换和区域合并技术的医学图像分割

Kamran Ali, A. Jalil, Munazza Gull, M. Fiaz
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引用次数: 8

摘要

分水岭变换是一种常用的图像分割方法。这种分割技术的主要问题是它对噪声和其他不规则性的敏感,从而导致过度分割。本文采用分水岭变换和预处理与后处理相结合的方法克服了图像的过分割问题。首先利用重构的多尺度形态滤波去除噪声,然后利用h最小变换提取标记。然后将这些标记叠加在梯度图像上。然后对修改后的梯度图进行分水岭变换。采用后处理区域合并技术,将分割过的区域合并到最终分割的地图中。实验结果表明,该方法有效地解决了过度分割问题,平均分割精度为0.96。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical Image Segmentation Using H-minima Transform and Region Merging Technique
Watershed transform is a commonly used image segmentation method. The main problem with this segmentation technique is that of its sensitivity to noise and other irregularities which leads to over-segmentation. In this paper the over-segmentation problem is overcome by combing pre-processing and post-processing techniques along with watershed transform. First multi-scale morphological filtering by reconstruction is used to remove noise and then h minima transform is implemented to extract markers. These markers are then superimposed on gradient image. Watershed transform is then applied on the modified gradient map. Post-processing region merging technique is used to merge the over segmented regions in the final segmented map. Experimental results show that the over-segmentation problem is reduced with the average segmentation accuracy of 0.96.
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