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计算机系统应用英文版:2024,33(4):194-201
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复合主干融合的图像增强算法
万嘉龙1, 况立群1,2,3, 曹亚明1,2,3, 郭磊1,2,3, 熊风光1,2,3
(1.中北大学 计算机科学与技术学院, 太原 030051;2.机器视觉与虚拟现实山西省重点实验室, 太原 030051;3.山西省视觉信息处理及智能机器人工程研究中心, 太原 030051)
Image Enhancement Algorithm for Composite Backbone Fusion
(1.School of Computer Science and Technology, North University of China, Taiyuan 030051, China;2.Shanxi Key Laboratory of Machine Vision and Virtual Reality, Taiyuan 030051, China;3.Shanxi Province’s Vision Information Processing and Intelligent Robot Engineering Research Center, Taiyuan 030051, China)
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Received:October 27, 2023    Revised:December 04, 2023
中文摘要: 基于深度学习的微光图像增强算法所生成的图像普遍存在噪声凸显和细节丢失等问题, 而端对端深度学习算法的性能又在很大程度上依赖于骨干网络的提取能力, 因此, 通过探索更有效的骨干网络结构可以提升微光增强任务的性能收益. 本文提出了一种复合主干网络融合策略的图像增强算法, 将不同图像增强算法中的主干网络进行融合, 以提高整体网络的特征提取能力. 该算法通过逐层融合来自不同主干网络的特征信息, 将复合特征引导到解码器中, 再充分利用不同的上采样方法, 将主干网络融合的特征进行堆叠, 最终生成正常光照条件下的图像. 通过与现有的主流算法进行定量与定性的对比实验, 结果显示, 本文方法显著提升了微光图像的亮度, 同时保留图像的细节特征, 在峰值信噪比和结构相似性客观指标上, 在LOL-V2数据集上达到了24.35 dB和0.871, 有效解决了图像增强后的噪声凸显和细节丢失问题.
中文关键词: 网络融合  图像增强  微光  复合主干
Abstract:The images generated by low-light image enhancement algorithms based on deep learning generally have problems such as noise highlighting and detail loss. However, the performance of end-to-end deep learning algorithms largely depends on the extraction ability of the backbone network. Therefore, exploring more effective backbone network structures can improve the performance benefits of low-light enhancement tasks. This study proposes an image enhancement algorithm based on a composite backbone network fusion strategy, which integrates backbone networks from different image enhancement algorithms to improve the overall network’s feature extraction ability. The algorithm integrates feature information from different backbone networks layer by layer and guides composite features into the decoder. It then fully utilizes different upsampling methods to stack the fused features of the backbone network, ultimately generating images under normal lighting conditions. Through quantitative and qualitative comparative experiments with existing mainstream algorithms, the results show that our method significantly improves the brightness of low-light images while preserving the detailed features of the images. In terms of objective indicators such as peak signal-to-noise ratio and structural similarity, it achieves 24.35 dB and 0.871 in the LOL-V2 dataset, effectively solving the problems of noise highlighting and detail loss after image enhancement.
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基金项目:国家自然科学基金(62272426, 62106238); 山西省科技重大专项计划“揭榜挂帅”项目(202201150401021); 山西省科技成果转化引导专项(202104021301055); 山西省基础研究计划(202203021222027)
引用文本:
万嘉龙,况立群,曹亚明,郭磊,熊风光.复合主干融合的图像增强算法.计算机系统应用,2024,33(4):194-201
WAN Jia-Long,KUANG Li-Qun,CAO Ya-Ming,GUO Lei,XIONG Feng-Guang.Image Enhancement Algorithm for Composite Backbone Fusion.COMPUTER SYSTEMS APPLICATIONS,2024,33(4):194-201