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📄 Abstract
Abstract: Enhancing RAW images captured under low light conditions is a challenging
task. Recent deep learning based RAW enhancement methods have shifted from
using real paired data to relying on synthetic datasets. These synthetic
datasets are typically generated by physically modeling sensor noise, but
existing approaches often consider only additive noise, ignore multiplicative
components, and rely on global calibration that overlooks pixel level
manufacturing variations. As a result, such methods struggle to accurately
reproduce real sensor noise. To address these limitations, this paper derives a
noise model from the physical noise generation mechanisms that occur under low
illumination and proposes a novel composite model that integrates both additive
and multiplicative noise. To solve the model, we introduce a physics based per
pixel noise simulation and calibration scheme that estimates and synthesizes
noise for each individual pixel, thereby overcoming the restrictions of
traditional global calibration and capturing spatial noise variations induced
by microscopic CMOS manufacturing differences. Motivated by the strong
performance of rectified flow methods in image generation and processing, we
further combine the physics-based noise synthesis with a rectified flow
generative framework and present PGRF a physics-guided rectified flow framework
for low light image enhancement. PGRF leverages the ability of rectified flows
to model complex data distributions and uses physical guidance to steer the
generation toward the desired clean image. To validate the effectiveness of the
proposed model, we established the LLID dataset, an indoor low light benchmark
captured with the Sony A7S II camera. Experimental results demonstrate that the
proposed framework achieves significant improvements in low light RAW image
enhancement.