Enhancement of high dynamic range images using variational calculus regularizer with stochastic resonance

Sumit Kumar, R. K. Jha
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引用次数: 10

Abstract

While capturing pictures by a simple camera in a scene with the presence of harsh or strong lighting like a full sunny day, we often find loss of highlight detail information (overexposure) in the bright regions and loss of shadow detail information (underexposure) in dark regions. In this manuscript, a classical method for retrieval of minute information from the high dynamic range image has been proposed. Our technique is based on variational calculus and dynamic stochastic resonance (DSR). We use a regularizer function, which has been added in order to optimise the correct estimation of the lost details from the overexposed or underexposed region of the image. We suppress the dynamic range of the luminance image by attenuating large gradient with the large magnitude and low gradient with low magnitude. At the same time, dynamic stochastic resonance (DSR) has been used to improve the underexposed region of the image. The experimental results of our proposed technique are capable of enhancing the quality of images in both overexposed and underexposed regions. The proposed technique is compared with most of the state-of-the-art techniques and it has been observed that the proposed technique is better or at most comparable to the existing techniques.
利用随机共振变分微积分正则化器增强高动态范围图像
当我们用简单的相机在阳光明媚的场景中拍摄照片时,我们经常会发现在明亮的区域丢失高光细节信息(过度曝光),在黑暗的区域丢失阴影细节信息(曝光不足)。本文提出了一种从高动态范围图像中提取微小信息的经典方法。我们的技术是基于变分微积分和动态随机共振(DSR)。我们使用了一个正则化函数,该函数是为了优化对图像过度曝光或曝光不足区域丢失细节的正确估计而添加的。通过大幅度衰减大梯度和低幅度衰减小梯度来抑制亮度图像的动态范围。同时,采用动态随机共振(DSR)技术改善了图像的欠曝光区域。实验结果表明,我们提出的技术能够提高过曝光和欠曝光区域的图像质量。将所建议的技术与大多数最先进的技术进行比较,并观察到所建议的技术比现有技术更好或最多可与之相比。
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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