Standard Deviation and Mode Based Bi-Histogram Equalization Algorithm for Image Enhancement

Kuldip Acharya, D. Ghoshal
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引用次数: 0

Abstract

This paper presents an enhancement method for image enhancement in poor lighting condition. Standard deviation and mode are computed on the image histogram. Histogram clipping process is done to limit the rate of over enhancement by mode-based threshold value. The clipped histogram is divided into two segments founded on a threshold value computed by the standard deviation on the image histogram. Two sub-images of the individual histogram are equalized and combined to form the output image that preserves the entropy and produced better contrast enhancement image. The results in terms of Universal Image Quality Index (UIQI), and Entropy, for images, have been simulated on MATLAB. The outcomes produced by the proposed method have been ompared with the results gotten from existing image enhancement methods. It has been observed from the outcomes that proposed method outperform previous methods.
基于标准差和模式的图像增强双直方图均衡化算法
提出了一种用于弱光条件下图像增强的方法。在图像直方图上计算标准差和模态。对直方图进行裁剪处理,以限制基于模式的阈值的过度增强率。根据图像直方图上的标准差计算的阈值,将裁剪后的直方图分为两个部分。对单个直方图的两个子图像进行均衡化和组合,形成保留熵的输出图像,产生更好的对比度增强图像。在MATLAB上对图像的通用图像质量指数(UIQI)和熵进行了仿真。将该方法与现有图像增强方法的结果进行了比较。从结果中可以看出,该方法优于以前的方法。
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