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Multi-scale Progressive Feature Embedding for Accurate NIR-to-RGB Spectral Domain Translation

About

NIR-to-RGB spectral domain translation is a challenging task due to the mapping ambiguities, and existing methods show limited learning capacities. To address these challenges, we propose to colorize NIR images via a multi-scale progressive feature embedding network (MPFNet), with the guidance of grayscale image colorization. Specifically, we first introduce a domain translation module that translates NIR source images into the grayscale target domain. By incorporating a progressive training strategy, the statistical and semantic knowledge from both task domains are efficiently aligned with a series of pixel- and feature-level consistency constraints. Besides, a multi-scale progressive feature embedding network is designed to improve learning capabilities. Experiments show that our MPFNet outperforms state-of-the-art counterparts by 2.55 dB in the NIR-to-RGB spectral domain translation task in terms of PSNR.

Xingxing Yang, Jie Chen, Zaifeng Yang• 2023

Related benchmarks

TaskDatasetResultRank
NIR-to-RGB translationVCIP 2020 (test)
PSNR22.14
11
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