Continuous Spectral Reconstruction from RGB Images via Implicit Neural
Representation
- URL: http://arxiv.org/abs/2112.13003v1
- Date: Fri, 24 Dec 2021 09:08:23 GMT
- Title: Continuous Spectral Reconstruction from RGB Images via Implicit Neural
Representation
- Authors: Ruikang Xu, Mingde Yao, Chang Chen, Lizhi Wang, Zhiwei Xiong
- Abstract summary: Existing methods for spectral reconstruction usually learn a discrete mapping from RGB images to a number of spectral bands.
We propose Neural Spectral Reconstruction (NeSR) to lift this limitation, by introducing a novel continuous spectral representation.
NeSR extends the flexibility of spectral reconstruction by enabling an arbitrary number of spectral bands as the target output.
- Score: 43.622087181097164
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Existing methods for spectral reconstruction usually learn a discrete mapping
from RGB images to a number of spectral bands. However, this modeling strategy
ignores the continuous nature of spectral signature. In this paper, we propose
Neural Spectral Reconstruction (NeSR) to lift this limitation, by introducing a
novel continuous spectral representation. To this end, we embrace the concept
of implicit function and implement a parameterized embodiment with a neural
network. Specifically, we first adopt a backbone network to extract spatial
features of RGB inputs. Based on it, we devise Spectral Profile Interpolation
(SPI) module and Neural Attention Mapping (NAM) module to enrich deep features,
where the spatial-spectral correlation is involved for a better representation.
Then, we view the number of sampled spectral bands as the coordinate of
continuous implicit function, so as to learn the projection from deep features
to spectral intensities. Extensive experiments demonstrate the distinct
advantage of NeSR in reconstruction accuracy over baseline methods. Moreover,
NeSR extends the flexibility of spectral reconstruction by enabling an
arbitrary number of spectral bands as the target output.
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