Tone Mapping of HDR Images via Meta-Guided Bayesian Optimization and Virtual Diffraction Modeling
Deju Huang, Xifeng Zheng, Jingxu Li, Ran Zhan, Jiachang Dong, Yuanyi Wen, Xinyue Mao, Yufeng Chen, Yu Chen

TL;DR
This paper introduces a new HDR image tone-mapping framework combining meta-learning, Bayesian optimization, and virtual diffraction to enhance visual quality and efficiency.
Contribution
The novel framework balances perceptual fidelity and naturalness using virtual diffraction and Bayesian optimization guided by meta-learning.
Findings
The proposed method outperforms existing tone-mapping algorithms by up to 27% in naturalness.
Meta-learning-guided Bayesian optimization converges 2-5 times faster than traditional methods.
The framework achieves high-quality results with low computational cost while maintaining visual fidelity.
Abstract
This paper proposes a novel image tone-mapping framework that incorporates meta-learning, a psychophysical model, Bayesian optimization, and light-field virtual diffraction. First, we formalize the virtual diffraction process as a mathematical operator defined in the frequency domain to reconstruct high-dynamic-range (HDR) images through phase modulation, enabling the precise control of image details and contrast. In parallel, we apply the Stevens power law to simulate the nonlinear luminance perception of the human visual system, thereby adjusting the overall brightness distribution of the HDR image and improving the visual experience. Unlike existing methods that primarily emphasize structural fidelity, the proposed method strikes a balance between perceptual fidelity and visual naturalness. Secondly, an adaptive parameter tuning system based on Bayesian optimization is developed to…
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Taxonomy
TopicsImage Enhancement Techniques · Computer Graphics and Visualization Techniques · Generative Adversarial Networks and Image Synthesis
