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Efficient Deep Demosaicing with Spatially Downsampled Isotropic Networks

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In digital imaging, image demosaicing is a crucial first step which recovers the RGB information from a color filter array (CFA). Oftentimes, deep learning is utilized to perform image demosaicing. Given that most modern digital imaging applications occur on mobile platforms, applying deep learning to demosaicing requires lightweight and efficient networks. Isotropic networks, also known as residual-in-residual networks, have been often employed for image demosaicing and joint-demosaicing-and-denoising (JDD). Most demosaicing isotropic networks avoid spatial downsampling entirely, and thus are often prohibitively expensive computationally for mobile applications. Contrary to previous isotropic network designs, this paper claims that spatial downsampling to a signficant degree can improve the efficiency and performance of isotropic networks. To validate this claim, we design simple fully convolutional networks with and without downsampling using a mathematical architecture design technique adapted from DeepMAD, and find that downsampling improves empirical performance. Additionally, empirical testing of the downsampled variant, JD3Net, of our fully convolutional networks reveals strong empirical performance on a variety of image demosaicing and JDD tasks.

Cory Fan, Wenchao Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Image DemosaickingKodak (test)
PSNR43.65
14
Image DemosaickingMcMaster (test)
PSNR40.07
14
HybridEVS DemosaicingKodak
PSNR39.63
9
HybridEVS DemosaicingBSD100
PSNR37.85
9
HybridEVS DemosaicingWED
PSNR36.18
9
HybridEVS DemosaicingKodak, McMaster, BSD100, Urban100, WED Average
PSNR37.64
9
HybridEVS DemosaicingUrban100
PSNR37.18
9
HybridEVS DemosaicingMcMaster
PSNR37.4
7
Joint Demosaicing and DenoisingHard Demosaicing Dataset (HDD)
PSNR (ISO 400, Single)54.06
5
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