基于边缘纹理直方图均衡化的视网膜图像增强

Ankit Kandpal, Neelu Jain
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引用次数: 5

摘要

视网膜图像中的低对比度和不均匀照明阻碍了准确检测病变的过程。基于边缘的纹理直方图均衡化(ETHE)因其校正对比度和光照问题的能力而具有重要的意义。本文将该算法应用于视网膜图像,以提高图像质量。利用自然场景统计,提出了一种新的图像质量模型“盲无参考图像空间质量评估器”(Blind\Referenceless image Spatial quality Evaluator, BRISQUE)。在四个不同的数据库中使用ETHE,图像质量提高了15.125%。该方法在性能上与基于主导方向的直方图均衡化(DOTHE)相当,两者都提供了类似的图像质量改进。但是,ETHE的平均模拟时间比DOTHE要短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retinal Image Enhancement Using Edge-based Texture Histogram Equalization
Low contrast and non-uniform illumination in retinal images hinders the process of accurate lesion detection. Edge- based Texture Histogram Equalization (ETHE) has been of significant importance with its ability to correct the contrast and illumination problems. In this paper, ETHE has been employed on retinal images to enhance the quality of the images. A new image quality model Blind\Referenceless Image Spatial Quality Evaluator (BRISQUE) which employs natural scene statistics has been used to detect the image quality. The image quality is improved by 15.125% with ETHE across four different databases. ETHE is comparable in performance with Dominant Orientation based Histogram Equalization (DOTHE), both providing similar image quality improvement. However, the average simulation time of ETHE is less than DOTHE.
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