Reconstructing the Colors of Underwater Images Based on the Color Mapping Strategy

Author:

Wu Siyuan12ORCID,Sun Bangyong12ORCID,Yang Xiao1,Han Wenjia3,Tan Jiahai4,Gao Xiaomei5

Affiliation:

1. School of Computer Science and Engineering, Xi’an University of Technology, Xi’an 710048, China

2. Key Laboratory of Spectral Imaging Technology of CAS, Xi’an Institute of Optics and Precision Mechanics, Chinese Academy of Sciences, Xi’an 710119, China

3. Key Laboratory of Pulp and Paper Science, Technology of Ministry of Education, Qilu University of Technology (Shandong Academy of Sciences), Jinan 250353, China

4. School of Optoelectronic Engineering, Xi’an Technological University, Xi’an 710021, China

5. Xi’an Mapping and Printing of China National Administration of Coal Geology, Xi’an 710199, China

Abstract

Underwater imagery plays a vital role in ocean development and conservation efforts. However, underwater images often suffer from chromatic aberration and low contrast due to the attenuation and scattering of visible light in the complex medium of water. To address these issues, we propose an underwater image enhancement network called CM-Net, which utilizes color mapping techniques to remove noise and restore the natural brightness and colors of underwater images. Specifically, CM-Net consists of a three-step solution: adaptive color mapping (ACM), local enhancement (LE), and global generation (GG). Inspired by the principles of color gamut mapping, the ACM enhances the network’s adaptive response to regions with severe color attenuation. ACM enables the correction of the blue-green cast in underwater images by combining color constancy theory with the power of convolutional neural networks. To account for inconsistent attenuation in different channels and spatial regions, we designed a multi-head reinforcement module (MHR) in the LE step. The MHR enhances the network’s attention to channels and spatial regions with more pronounced attenuation, further improving contrast and saturation. Compared to the best candidate models on the EUVP and UIEB datasets, CM-Net improves PSNR by 18.1% and 6.5% and SSIM by 5.9% and 13.3%, respectively. At the same time, CIEDE2000 decreased by 25.6% and 1.3%.

Publisher

MDPI AG

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