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Deep Lightweight Unrolled Network for High Dynamic Range Modulo Imaging

About

Modulo-Imaging (MI) offers a promising alternative for expanding the dynamic range of images by resetting the signal intensity when it reaches the saturation level. Subsequently, high-dynamic range (HDR) modulo imaging requires a recovery process to obtain the HDR image. MI is a non-convex and ill-posed problem where recent recovery networks suffer in high-noise scenarios. In this work, we formulate the HDR reconstruction task as an optimization problem that incorporates a deep prior and subsequently unrolls it into an optimization-inspired deep neural network. The network employs a lightweight convolutional denoiser for fast inference with minimal computational overhead, effectively recovering intensity values while mitigating noise. Moreover, we introduce the Scaling Equivariance term that facilitates self-supervised fine-tuning, thereby enabling the model to adapt to new modulo images that fall outside the original training distribution. Extensive evaluations demonstrate the superiority of our method compared to state-of-the-art recovery algorithms in terms of performance and quality.

Brayan Monroy, Jorge Bacca• 2026

Related benchmarks

TaskDatasetResultRank
HDR ReconstructionReal RGB dataset from UnModNet (test)
PSNR-L30.75
7
HDR ReconstructionUnModNet noise-free (sigma=0)
HDR-VDP-38.61
6
HDR ReconstructionUnModNet noise=25 (sigma=25)
HDR-VDP-38.42
6
HDR ReconstructionUnModNet sigma=40 noise=40
HDR-VDP-38.13
6
HDR ReconstructionUnModNet sigma=80 noise=80
HDR-VDP-37.26
6
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