Skip to main content
  • SPS
    Members: Free
    IEEE Members: $11.00
    Non-members: $15.00
    Length: 0:10:07
27 Jun 2022

This paper presents an efficient learning-based model to reconstruct hyperspectral cubes from RGB images. While several deep learning models have been developed for the hyperspectral reconstruction problem, the expensive computation associated with these models discounted their practicality to be implemented in end-user devices, e.g., the smartphone. To this end, we propose a Line-Pixel Deconvolution, mimicking the line scanning mechanism of a pushbroom camera, to first reconstruct the spectral information of each line, before composing the final hyperspectral cube with each reconstructed line. The resulting model achieves satisfactory reconstruction quality comparable to the existing deep learning models used in the hyperspectral reconstruction problem, while requiring lesser parameters and operations. Our proposed model also achieves a faster inference time compared to the existing deep learning models.