A Comparative Analysis of Deep Learning based Approaches for Low-Light Image Enhancement

A. Parihar, Shivam Singhal, Srishti Nanduri, Y. Raghav
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引用次数: 2

Abstract

Images clicked under low and non-uniform light conditions are visually unpleasant and lose details. Low-light images also impact the performance and thus reduce the effectiveness of various computer vision tasks. Thus numerous methods have been put forward in the past to upgrade the quality of low-light images. The innovations in the field of deep learning have paved the way for the application of neural networks to the task of enhancing low-light images. In this paper, we offer a comparative analysis of various approaches using deep learning for enhancing low-light images. We explore retinex based methods including KinD and RDGAN, and other non-retinex based methods including LLNet, GLAD Net, and Zero-DCE. We measure the effectiveness of these methods on various datasets and provide their advantages and disadvantages.
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基于深度学习的弱光图像增强方法比较分析
在低和不均匀的光线条件下拍摄的图像在视觉上不愉快,并且失去了细节。低光图像也会影响性能,从而降低各种计算机视觉任务的有效性。因此,过去提出了许多方法来提升低光图像的质量。深度学习领域的创新为神经网络应用于增强弱光图像的任务铺平了道路。在本文中,我们对使用深度学习增强弱光图像的各种方法进行了比较分析。我们探索了基于retinex的方法,包括KinD和RDGAN,以及其他非retinex的方法,包括LLNet, GLAD Net和Zero-DCE。我们测量了这些方法在不同数据集上的有效性,并提供了它们的优点和缺点。
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