Coarse-to-Fine Luminance Estimation for Low-Light Image Enhancement in Maritime Video Surveillance

Meifang Yang, Xin Nie, R. W. Liu
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引用次数: 21

Abstract

Captured images in maritime video surveillance under non-uniform illumination conditions easily suffer from low contrast and details loss. The low-quality images may significantly result in negative effects in practical applications, e.g., target detection, recognition, classification and tracking, etc. Increasing attention has recently been paid to improve the quality of low-light images via computer vision techniques. In this paper, we propose to establish a two-step luminance estimation framework to enhance low-light images. In particular, the coarse luminance is firstly estimated using traditional Max-RGB which extracts the highest pixel values in each color channel. The refined luminance is obtained by introducing a weighted variational model which has the capacities of structure-preserving and texture-smoothing. Based on the estimated well-constructed luminance, the enhanced low-light images are obtained by combining Retinex model with its extended version. The image quality is further improved through a BM3D-based denoising approach. Experimental results on both synthetic and realistic low-light images have demonstrated the satisfactory imaging performance in terms of quantitative and qualitative evaluations.
海上视频监控中微光图像增强的粗到细亮度估计
在非均匀光照条件下,海上视频监控中捕获的图像容易出现对比度低、细节丢失等问题。在实际应用中,低质量的图像会对目标检测、识别、分类和跟踪等产生严重的负面影响。近年来,利用计算机视觉技术提高微光图像的质量越来越受到人们的关注。在本文中,我们提出了一种两步亮度估计框架来增强低光图像。特别是,首先使用传统的Max-RGB提取每个颜色通道中的最高像素值来估计粗亮度。通过引入具有结构保持和纹理平滑能力的加权变分模型来获得精细亮度。基于估计的构造良好的亮度,将Retinex模型与其扩展模型相结合,得到增强的弱光图像。通过基于bm3d的去噪方法,进一步提高了图像质量。实验结果表明,该方法在合成和真实低光图像上的成像性能令人满意。
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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