基于权重聚类直方图均衡化的医学图像增强

N. Sengee, B. Bazarragchaa, T. Y. Kim, H. Choi
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引用次数: 17

摘要

对比度增强对于医学图像来说是非常重要和有用的。一种被广泛接受的对比度增强方法是直方图均衡化(GHE)。虽然GHE在几乎所有类型的图像上都取得了相对较好的性能,但GHE有时会产生过度的视觉退化。人们开发了一些GHE扩展,但是这些扩展有时不能增强原始图像的可视化或过度增强原始图像的对比度。过度增强对比度,可能会丢失一些重要信息。为此,我们提出了一种新的加权聚类直方图均衡化方法(WCHE)。WCHE将原始图像直方图的每个非零bin分配给单独的聚类,并计算每个聚类的权值。通过三个建议标准减少聚类数。然后,聚类获得与结果图像直方图相同的分区。最后,在新获得的结果图像直方图分区中,基于传统的GHE方法计算每个聚类的子直方图的变换函数,并通过相应的变换函数将子直方图的灰度级映射到结果图像上。我们通过实验验证了WCHE的有效性,并给出了一些数值结果。
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Weight Clustering Histogram Equalization for Medical Image Enhancement
Contrast enhancement is important and useful for medical images. One of the widely accepted contrast enhancement method is histogram equalization (GHE). Although GHE achieves comparatively better performance on almost all types of image, GHE sometimes produces excessive visual deterioration. Some extensions of GHE are developed, however these extensions sometimes either fail to enhance the visualization or over enhance contrast of the original image. By over-enhancing contrast, some important information may be lost. Therefore we propose a new method called "Weight Clustering Histogram Equalization" (WCHE). WCHE assigns each non-zero bin of the original image's histogram to a separate cluster, and computes each cluster's weight. The cluster numbers are reduced by three suggesting criteria. Then, the clusters acquire the same partitions as the result image histogram. Finally, transformation functions for each cluster's sub-histogram are calculated based on the traditional GHE method in the new acquired partitions of the result image histogram, and the sub-histogram's gray levels are mapped to the result image by the corresponding transformation functions. We showed experimentally that WCHE bas been validated with some numerical results.
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