首页|基于多尺度残差注意力网络的水下图像增强

基于多尺度残差注意力网络的水下图像增强

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针对水下图像由水的散射、吸收引起的色偏、色弱、信息丢失问题,提出了一种基于多尺度残差注意力网络的水下图像增强算法.该网络引入了改进的UNet3+-Avg结构与注意力机制,设计出多尺度密集特征提取模块与残差注意力恢复模块,以及由Charbonnier损失和边缘损失相结合的联合损失函数,使该网络得以学习到多个尺度的丰富特征,在改善图像色彩的同时又可保留大量的物体边缘信息.增强后图像的平均峰值信噪比(PSNR)达到 23.63 dB、结构相似度(SSIM)达到 0.93.与其他水下图像增强网络的对比实验结果表明,由该网络所增强的图像在主观感受与客观评价上都取得了显著的效果.
Underwater image enhancement based on multiscale residual attention networks
An underwater image enhancement algorithm based on multi-scale residual attention network was proposed for the problems of color shift,color fading and information loss of underwater images caused by water scattering and absorption.An improved UNet3+-Avg structure and attention mechanism was introduced by the network,and the multi-scale dense feature extraction module as well as the residual attention recovery module were designed.In addition,a joint loss function combining Charbonnier loss and edge loss enabled the network to learn rich features at multiple scales,improving the image color while retaining a large amount of object edge information.The average peak signal-to-noise ratio(PSNR)of the enhanced images reaches 23.63 dB and the structural similarity ratio(SSIM)reaches 0.93.Experimental results with other underwater image enhancement networks show that the images enhanced by this network achieve significant results in both subjective perception and objective evaluation.

image processingunderwater image enhancementmulti-scale feature extractiondense connectivityattention mechanism

陈清江、王炫钧、邵菲

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西安建筑科技大学理学院,陕西西安 710055

图像处理 水下图像增强 多尺度特征提取 密集连接 注意力机制

国家自然科学基金青年项目陕西省自然科学基础研究计划

122023322021JQ-495

2024

应用光学
中国兵工学会 中国兵器工业第二0五研究所

应用光学

CSTPCD北大核心
影响因子:0.517
ISSN:1002-2082
年,卷(期):2024.45(1)
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