A Learnable Color Correction Matrix for RAW Reconstruction
Autonomous driving algorithms usually employ sRGB images as model input due to their compatibility with the human visual system. However, visually pleasing sRGB images are possibly sub-optimal for downstream tasks when compared to RAW images. The availability of RAW images is constrained by the diff...
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Zusammenfassung: | Autonomous driving algorithms usually employ sRGB images as model input due
to their compatibility with the human visual system. However, visually pleasing
sRGB images are possibly sub-optimal for downstream tasks when compared to RAW
images. The availability of RAW images is constrained by the difficulties in
collecting real-world driving data and the associated challenges of annotation.
To address this limitation and support research in RAW-domain driving
perception, we design a novel and ultra-lightweight RAW reconstruction method.
The proposed model introduces a learnable color correction matrix (CCM), which
uses only a single convolutional layer to approximate the complex inverse image
signal processor (ISP). Experimental results demonstrate that simulated RAW
(simRAW) images generated by our method provide performance improvements
equivalent to those produced by more complex inverse ISP methods when
pretraining RAW-domain object detectors, which highlights the effectiveness and
practicality of our approach. |
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DOI: | 10.48550/arxiv.2409.02497 |