视觉显著性增强的双鉴别器红外与可见光图像融合OA
Dual discriminator fusion of infrared and visible light images for visual saliency enhancement
针对红外与可见光图像融合中边缘不清晰、细节缺失等问题,提出了一种视觉显著性增强的双鉴别器融合方法.采用局部自适应对可见光图像进行增强,并采用各向异性扩散对红外与可见光图像分解;通过视觉显著性检测对分解后的细节层图像和基础层图像进行视觉增强;设计密集连接 DenseNet生成器模型对视觉增强后图像进行特征学习;通过与双鉴别器博弈对抗得到融合结果.在公开数据集中与 10种融合方法进行对比,实验结果表明:所提方法具有更清晰的细节信息,在主客观评估上均优于对比方法,客观评价指标较 FusionGAN方法在信息熵、空间频率、结构相似性和标准偏差上分别提高了7.4%、58.8%、25.5%和35.7%.
In order to solve the problem of unclear edges and missing details in infrared and visible light image fusion,a saliency enhanced dual discriminator generation adversarial infrared and visible light image fusion method is proposed.First,infrared and visible light images are broken down using anisotropic diffusion,while visible light images are improved using local adaptation.Then,visual saliency detection is used to visually enhance the decomposed detail layer image and the base layer image.Next,a dense connected DenseNet generator model is designed to perform feature learning on visually enhanced images.Finally,the fusion result is obtained by competing with the dual discriminator game.Experimental results demonstrate that the suggested approach has more precise information and performs better than the comparison algorithm in both subjective and objective assessments when compared to ten fusion techniques in a public dataset.Compared with the FusionGAN algorithm,the proposed method has improved objective evaluation indicators such as information entropy,spatial frequency,structural similarity,and standard deviation by 7.4%,58.8%,25.5%,and 35.7%,respectively.
陈永;周方春;董珂
兰州交通大学 电子与信息工程学院,兰州 730070||甘肃省人工智能与图形图像处理工程研究中心,兰州 730070兰州交通大学 电子与信息工程学院,兰州 730070兰州交通大学 电子与信息工程学院,兰州 730070
信息技术与安全科学
红外与可见光图像融合视觉显著性增强各向异性扩散双鉴别器生成对抗网络
infrared and visible light image fusionvisual saliency enhancementanisotropic diffusiondual-discriminatorgenerate adversarial network
《北京航空航天大学学报》 2026 (4)
1107-1115,9
国家自然科学基金(62462043,61963023)甘肃省自然科学基金(26JRRA589) National Natural Science Foundation of China(62462043,61963023)Gansu Provincial Nature Science Foundation(26JRRA589)
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