2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW) 2022
DOI: 10.1109/cvprw56347.2022.00102
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NTIRE 2022 Spectral Recovery Challenge and Data Set

Abstract: This paper reviews the third biennial challenge on spectral reconstruction from RGB images, i.e., the recovery of whole-scene hyperspectral (HS) information from a 3-channel RGB image. This challenge presents the "ARAD 1K" data set: a new, larger-than-ever natural hyperspectral image data set containing 1,000 images. Challenge participants were required to recover hyperspectral information from synthetically generated JPEGcompressed RGB images simulating capture by a known calibrated camera, operating under pa… Show more

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Cited by 51 publications
(22 citation statements)
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“…As is possible to see, the proposed method with 198.45 FPS is considerably faster than the other methods. This number is higher than the 104.71 FPS reported in [5] because we optimize the code efficiency by asynchronously running the forward pass for the two SqueezeNet models. Compared to deep learningbased methods that run in GPUs, it is an order of magnitude faster than HRNet and three orders of magnitude faster than AWAN.…”
Section: Inference Speed Comparisonmentioning
confidence: 82%
See 2 more Smart Citations
“…As is possible to see, the proposed method with 198.45 FPS is considerably faster than the other methods. This number is higher than the 104.71 FPS reported in [5] because we optimize the code efficiency by asynchronously running the forward pass for the two SqueezeNet models. Compared to deep learningbased methods that run in GPUs, it is an order of magnitude faster than HRNet and three orders of magnitude faster than AWAN.…”
Section: Inference Speed Comparisonmentioning
confidence: 82%
“…We train and evaluate our Fast-n-Squeeze on the Arad 1K Hyperspectral Database provided by NTIRE 2022 challenge [5].…”
Section: Datasetsmentioning
confidence: 99%
See 1 more Smart Citation
“…Owing to our goal is to recovery HSIs from natural RGB images and the wavelength of natural RGB images ranges from about 400 -700 nm. For the purpose of reducing training cost and improving training efficiency, the images were resampled to 31 spectral bands in the visual range from 400 nm to 700 nm with a spectral resolution of 10 nm (Arad et al (2022)). In this study, the images of maize were captured at a distance of 1-1.5 m. A neutral reference panel with 99% reflection efficiency was used to perform spectral calibration.…”
Section: Data Acquisition and Calibrationmentioning
confidence: 99%
“…This challenge is one of the NTIRE 2022 associated challenges: spectral recovery [6], spectral demosaicing [5], perceptual image quality assessment [26], inpainting [46], efficient super-resolution [35], learning the super-resolution space [41], super-resolution and quality enhancement of compressed video [55], high dynamic range [44], stereo super-resolution [52], burst super-resolution [8].…”
Section: Introductionmentioning
confidence: 99%