Image contrast enhancement for preserving entropy and image visual features

Bilal Bataineh
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Abstract

Histogram equalization is essential for low-contrast enhancement in image processing. Several methods have been proposed; however, one of the most critical problems encountered by existing methods is their ability to preserve information in the enhanced image as the original. This research proposes an image enhancement method based on a histogram equalization approach that preserves the entropy and fine details similar to those of the original image. This is achieved through proposed probability density functions (PDFs) that preserve the small gray values of the usual PDF. The method consists of several steps. First, occurrences and clipped histograms are extracted according to the proposed thresholding. Then, they are equalized and used by a proposed transferring function to calculate the new pixel values in the enhanced image. The proposed method is compared with widely used methods such as Clahe, CS, HE, and GTSHE. Experiments using benchmark datasets and entropy, contrast, PSNR, and SSIM measurements are conducted to evaluate the performance. The results show that the proposed method is the only one that preserves the entropy of the enhanced image of the original image. In addition, it is efficient and reliable in enhancing image quality. This method preserves fine details and improves image quality, supporting computer vision and pattern recognition fields.
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图像对比度增强以保持熵和图像视觉特征
直方图均衡化是图像处理中低对比度增强的关键。提出了几种方法;然而,现有方法遇到的最关键的问题之一是它们不能将增强图像中的信息保留为原始图像。本研究提出了一种基于直方图均衡化方法的图像增强方法,该方法保留了与原始图像相似的熵和精细细节。这是通过建议的概率密度函数(PDF)实现的,该函数保留了通常PDF的小灰度值。该方法包括几个步骤。首先,根据所提出的阈值提取事件和剪切直方图。然后,对它们进行均衡,并利用所提出的传递函数计算增强图像中的新像素值。并与clhe、CS、HE、GTSHE等常用方法进行了比较。使用基准数据集和熵、对比度、PSNR和SSIM测量进行实验来评估性能。结果表明,该方法是唯一一种能保持增强后图像的熵值的方法。此外,它在提高图像质量方面是高效可靠的。该方法保留了精细的细节,提高了图像质量,支持计算机视觉和模式识别领域。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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0.00%
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