Reconstruction of compressed spectral imaging based on global structure
and spectral correlation
- URL: http://arxiv.org/abs/2210.15492v1
- Date: Thu, 27 Oct 2022 14:31:02 GMT
- Title: Reconstruction of compressed spectral imaging based on global structure
and spectral correlation
- Authors: Pan Wang, Jie Li, Siqi Zhang, Chun Qi, Lin Wang, and Jieru Chen
- Abstract summary: The proposed method uses the convolution kernel to operate the global image.
To solve the problem that convolutional sparse coding is insensitive to low frequency, the global total-variation (TV) constraint is added.
The proposed method improves the reconstruction quality by up to 7 dB in PSNR and 10% in SSIM.
- Score: 17.35611893815407
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, a convolution sparse coding method based on global structure
characteristics and spectral correlation is proposed for the reconstruction of
compressive spectral images. The proposed method uses the convolution kernel to
operate the global image, which can better preserve image structure information
in the spatial dimension. To take full exploration of the constraints between
spectra, the coefficients corresponding to the convolution kernel are
constrained by the norm to improve spectral accuracy. And, to solve the problem
that convolutional sparse coding is insensitive to low frequency, the global
total-variation (TV) constraint is added to estimate the low-frequency
components. It not only ensures the effective estimation of the low-frequency
but also transforms the convolutional sparse coding into a de-noising process,
which makes the reconstructing process simpler. Simulations show that compared
with the current mainstream optimization methods (DeSCI and Gap-TV), the
proposed method improves the reconstruction quality by up to 7 dB in PSNR and
10% in SSIM, and has a great improvement in the details of the reconstructed
image.
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