JOURNAL OF LIGHT INDUSTRY

CN 41-1437/TS  ISSN 2096-1553

Volume 35 Issue 4
July 2020
Article Contents
CHEN Jiguang and SU Bingshan. Single infrared image super-resolution algorithm based on improved total generalized variation[J]. Journal of Light Industry, 2020, 35(4): 103-108. doi: 10.12187/2020.04.014
Citation: CHEN Jiguang and SU Bingshan. Single infrared image super-resolution algorithm based on improved total generalized variation[J]. Journal of Light Industry, 2020, 35(4): 103-108. doi: 10.12187/2020.04.014 shu

Single infrared image super-resolution algorithm based on improved total generalized variation

  • Received Date: 2020-03-13
  • Aiming at the problem that the tranditional total generalized variation (TGV) algorithm could not restrain noise effectively in the process of infrared image super-resolution, a single infrared image super-resolution algorithm based on improved TGV was proposed. Firstly, the algorithm was built by second-order TGV regularization model and first-order graduate sharpening operator. First-order graduate sharpening operator was added during the process of gradient ascent, and the factor of first-order graduate sharpening operator was added during the process of gradient descent, so this algorithm acquired a new kind of infrared image super-resolution regularization model. Then it inferred the high-resolution infrared image with a first-order primal-dual optimization scheme. The experimental results showed that the algorithm was superior to other traditional algorithms in terms of subjective visual effect and objective evaluation index, and could obtain high-quality high-resolution infrared images, effectively suppress noise and reduce the complexity of hardware implementation, and had strong practicality.
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