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Spectral Super-Resolution for High Dynamic Range Images.

Yuki MikamotoYoshiki KaminakaToru HigakiBisser RaytchevKazufumi Kaneda
Published in: Journal of imaging (2023)
The images we commonly use are RGB images that contain three pieces of information: red, green, and blue. On the other hand, hyperspectral (HS) images retain wavelength information. HS images are utilized in various fields due to their rich information content, but acquiring them requires specialized and expensive equipment that is not easily accessible to everyone. Recently, Spectral Super-Resolution (SSR), which generates spectral images from RGB images, has been studied. Conventional SSR methods target Low Dynamic Range (LDR) images. However, some practical applications require High Dynamic Range (HDR) images. In this paper, an SSR method for HDR is proposed. As a practical example, we use the HDR-HS images generated by the proposed method as environment maps and perform spectral image-based lighting. The rendering results by our method are more realistic than conventional renderers and LDR SSR methods, and this is the first attempt to utilize SSR for spectral rendering.
Keyphrases
  • optical coherence tomography
  • deep learning
  • convolutional neural network
  • healthcare
  • health information
  • genetic diversity
  • palliative care