Sensors (Feb 2023)

INAM-Based Image-Adaptive 3D LUTs for Underwater Image Enhancement

  • Xiao Xiao,
  • Xingzhi Gao,
  • Yilong Hui,
  • Zhiling Jin,
  • Hongyu Zhao

DOI
https://doi.org/10.3390/s23042169
Journal volume & issue
Vol. 23, no. 4
p. 2169

Abstract

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To the best of our knowledge, applying adaptive three-dimensional lookup tables (3D LUTs) to underwater image enhancement is an unprecedented attempt. It can achieve excellent enhancement results compared to some other methods. However, in the image weight prediction process, the model uses the normalization method of Instance Normalization, which will significantly reduce the standard deviation of the features, thus degrading the performance of the network. To address this issue, we propose an Instance Normalization Adaptive Modulator (INAM) that amplifies the pixel bias by adaptively predicting modulation factors and introduce the INAM into the learning image-adaptive 3D LUTs for underwater image enhancement. The bias amplification strategy in INAM makes the edge information in the features more distinguishable. Therefore, the adaptive 3D LUTs with INAM can substantially improve the performance on underwater image enhancement. Extensive experiments are undertaken to demonstrate the effectiveness of the proposed method.

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