CEN-HDR: Computationally Efficient neural Network for real-time High Dynamic Range imaging
High dynamic range (HDR) imaging is still a challenging task in modern digital photography. Recent research proposes solutions that provide high-quality acquisition but at the cost of a very large number of operations and a slow inference time that prevent the implementation of these solutions on li...
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Zusammenfassung: | High dynamic range (HDR) imaging is still a challenging task in modern
digital photography. Recent research proposes solutions that provide
high-quality acquisition but at the cost of a very large number of operations
and a slow inference time that prevent the implementation of these solutions on
lightweight real-time systems. In this paper, we propose CEN-HDR, a new
computationally efficient neural network by providing a novel architecture
based on a light attention mechanism and sub-pixel convolution operations for
real-time HDR imaging. We also provide an efficient training scheme by applying
network compression using knowledge distillation. We performed extensive
qualitative and quantitative comparisons to show that our approach produces
competitive results in image quality while being faster than state-of-the-art
solutions, allowing it to be practically deployed under real-time constraints.
Experimental results show our method obtains a score of 43.04 mu-PSNR on the
Kalantari2017 dataset with a framerate of 33 FPS using a Macbook M1 NPU. |
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DOI: | 10.48550/arxiv.2302.05213 |