An Artificial Neural Network based Adaptive Histogram Equalization Algorithm for Enhancement of Low Contrast Images

Versha Thakur, Harjinder Singh
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Abstract

The implementation of an image contrast enhancement algorithm along with artificial intelligence techniques can have various applications besides modern photography. It basically ameliorates the quality of low contrast images. The main focus of this research is developing a new image contrast enhancement method that combines the concept of artificial intelligence and histogram equalization techniques to provide a contrast distribution for the low contrast images by utilizing the classifier to prevent data loss from images. In this research an ANN based AHE algorithm for enhancement of low contrast images is proposed. The main objectives of this research is to study the existing digital image contrast enhancement techniques to find out the exact problems and to classify the level of contrast in a digital image as low or high, so as to ascertain whether enhancement is required or not. The concept of ANN with AHE is used here to find out the contrast level of the image before processing for contrast enhancement. For validation of the proposed ANN-AHE algorithm, a comparison with the existing techniques are performed on the behalf of performance parameters such as PSNR, MSE, Entropy, QI, QRCM, CQE, SSIM and Computational Time. The simulation of the proposed model is performed in MATLAB 2016a with the help of image processing and artificial neural network toolbox.
基于人工神经网络的低对比度图像自适应直方图均衡化算法
图像对比度增强算法的实现以及人工智能技术除了现代摄影之外还可以具有各种应用。它基本上改善了低对比度图像的质量。本研究的主要重点是开发一种新的图像对比度增强方法,该方法将人工智能的概念与直方图均衡化技术相结合,利用分类器为低对比度图像提供对比度分布,防止图像数据丢失。本文提出了一种基于人工神经网络的低对比度图像增强算法。本研究的主要目的是研究现有的数字图像对比度增强技术,找出问题所在,并将数字图像的对比度划分为低对比度和高对比度,从而确定是否需要增强。这里使用了带有AHE的人工神经网络的概念,在进行对比度增强处理之前先找出图像的对比度水平。为了验证所提ANN-AHE算法的有效性,以PSNR、MSE、Entropy、QI、QRCM、CQE、SSIM和Computational Time等性能参数与现有算法进行了比较。利用图像处理和人工神经网络工具箱,在MATLAB 2016a中对所提出的模型进行仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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