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Machine learning hyperparameter selection for Contrast Limited Adaptive Histogram Equalization

机译:机器学习近双参数选择对比度有限自适应直方图均衡

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Abstract Contrast enhancement algorithms have been evolved through last decades to meet the requirement of its objectives. Actually, there are two main objectives while enhancing the contrast of an image: (i) improve its appearance for visual interpretation and (ii) facilitate/increase the performance of subsequent tasks (e.g., image analysis, object detection, and image segmentation). Most of the contrast enhancement techniques are based on histogram modifications, which can be performed globally or locally. The Contrast Limited Adaptive Histogram Equalization (CLAHE) is a method which can overcome the limitations of global approaches by performing local contrast enhancement. However, this method relies on two essential hyperparameters: the number of tiles and the clip limit . An improper hyperparameter selection may heavily decrease the image quality toward its degradation. Considering the lack of methods to efficiently determine these hyperparameters, this article presents a learning-based hyperparameter selection method for the CLAHE technique. The proposed supervised method was built and evaluated using contrast distortions from well-known image quality assessment datasets. Also, we introduce a more challenging dataset containing over 6200 images with a large range of contrast and intensity variations. The results show the efficiency of the proposed approach in predicting CLAHE hyperparameters with up to 0.014 RMSE and 0.935 R sup2/sup values. Also, our method overcomes both experimented baselines by enhancing image contrast while keeping its natural aspect.
机译:摘要对比增强算法已经在过去几十年中已经发展,以满足其目标的要求。实际上,有两个主要目标,同时增强图像的对比度:(i)改善其视觉解释的外观和(ii)促进/增加后续任务的性能(例如,图像分析,对象检测和图像分割)。大多数对比度增强技术基于直方图修改,其可以全局或本地执行。对比度有限的自适应直方图均衡(CLAHE)是一种通过执行本地对比度增强来克服全局方法的局限性的方法。但是,此方法依赖于两个基本的超参数:图块数量和剪辑限制。不正确的超参数选择可能会严重降低图像质量朝其降级降低。考虑到缺乏有效地确定这些超参数的方法,本文提出了一种用于CLAHE技术的基于学习的超参数选择方法。使用来自众所周知的图像质量评估数据集的对比度扭曲构建和评估所提出的监督方法。此外,我们介绍了一个更具挑战性的数据集,包含超过6200张图像,具有大范围的对比度和强度变化。结果表明,在预测高达0.014 RMSE和0.935R 2 值的情况下,提出了拟议方法的效率。此外,我们的方法通过增强图像对比来克服两种实验基线,同时保持自然方面。

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