Matches in SemOpenAlex for { <https://semopenalex.org/work/W4288075286> ?p ?o ?g. }
- W4288075286 endingPage "108712" @default.
- W4288075286 startingPage "108712" @default.
- W4288075286 abstract "• Mixture noise reduction as a key pre-process improves the HSI images’ quality • Mixture noise modeling is a challenge and should be close to the real noise • Proposed mixture noise model leads to Bayesian framework selection • Proposed method used low-rank factorization, total variation, L1, and nuclear norm • Devised problem is solved by augmented Lagrange multiplier and proximal gradient Mixture noise reduction is a key pre-process that improves the hyperspectral images’ (HSI) quality and prepares them for the next processes. Mixture noise should be modeled as similar as possible to the real HSI noise model, which is a challenge for noise removal methods. These use noise model simplification assumptions that can take the method performance away from real scenarios. This paper adopts a new general model for the mixture noise which leads to one model selection framework. The optimization problem of the proposed method is formed using Bayesian risk in five different models and promoted to total variation regularized low-rank matrix factorization. The devised optimization problem is solved using augmented Lagrange multiplier and proximal gradient algorithms. Also, we compared the proposed method with other state-of-the-art methods to reduce the mixture noise of HSI, which is a combination of Gaussian (i.i.d or non-i.i.d), and sparse (e.g., stripe, deadline, impulse) noises. The results obtained on both real and synthetic HSI data sets show the proposed method’s performance superiority to other competing methods in both visual comparisons and quantitative evaluations." @default.
- W4288075286 created "2022-07-28" @default.
- W4288075286 creator A5011179125 @default.
- W4288075286 creator A5019178808 @default.
- W4288075286 creator A5034961563 @default.
- W4288075286 creator A5064885254 @default.
- W4288075286 date "2022-12-01" @default.
- W4288075286 modified "2023-09-26" @default.
- W4288075286 title "Bayesian framework selection for hyperspectral image denoising" @default.
- W4288075286 cites W1944540851 @default.
- W4288075286 cites W1969352102 @default.
- W4288075286 cites W1970099214 @default.
- W4288075286 cites W1977066218 @default.
- W4288075286 cites W1994040806 @default.
- W4288075286 cites W2011181254 @default.
- W4288075286 cites W2032944446 @default.
- W4288075286 cites W2039596145 @default.
- W4288075286 cites W2053419820 @default.
- W4288075286 cites W2054010646 @default.
- W4288075286 cites W2056370875 @default.
- W4288075286 cites W2078146345 @default.
- W4288075286 cites W2095734615 @default.
- W4288075286 cites W2103972604 @default.
- W4288075286 cites W2125298866 @default.
- W4288075286 cites W2128148283 @default.
- W4288075286 cites W2129891925 @default.
- W4288075286 cites W2133665775 @default.
- W4288075286 cites W2136625467 @default.
- W4288075286 cites W2140702875 @default.
- W4288075286 cites W2142224912 @default.
- W4288075286 cites W2144348684 @default.
- W4288075286 cites W2148717137 @default.
- W4288075286 cites W2153663612 @default.
- W4288075286 cites W2163886442 @default.
- W4288075286 cites W2170389357 @default.
- W4288075286 cites W2322364181 @default.
- W4288075286 cites W2394774286 @default.
- W4288075286 cites W2585357012 @default.
- W4288075286 cites W2591248827 @default.
- W4288075286 cites W2617982036 @default.
- W4288075286 cites W2790346082 @default.
- W4288075286 cites W2790528326 @default.
- W4288075286 cites W2790888198 @default.
- W4288075286 cites W2896795507 @default.
- W4288075286 cites W2963213461 @default.
- W4288075286 cites W2963627587 @default.
- W4288075286 cites W2964179170 @default.
- W4288075286 cites W2972301798 @default.
- W4288075286 cites W2979001238 @default.
- W4288075286 cites W3012136461 @default.
- W4288075286 cites W3090929676 @default.
- W4288075286 cites W3099968609 @default.
- W4288075286 cites W3103224927 @default.
- W4288075286 cites W3104887532 @default.
- W4288075286 cites W3134490757 @default.
- W4288075286 cites W3147172970 @default.
- W4288075286 cites W3168131970 @default.
- W4288075286 cites W3179808591 @default.
- W4288075286 cites W4224224179 @default.
- W4288075286 cites W4244393449 @default.
- W4288075286 cites W4285119471 @default.
- W4288075286 cites W4297632443 @default.
- W4288075286 cites W2465611810 @default.
- W4288075286 doi "https://doi.org/10.1016/j.sigpro.2022.108712" @default.
- W4288075286 hasPublicationYear "2022" @default.
- W4288075286 type Work @default.
- W4288075286 citedByCount "2" @default.
- W4288075286 countsByYear W42880752862023 @default.
- W4288075286 crossrefType "journal-article" @default.
- W4288075286 hasAuthorship W4288075286A5011179125 @default.
- W4288075286 hasAuthorship W4288075286A5019178808 @default.
- W4288075286 hasAuthorship W4288075286A5034961563 @default.
- W4288075286 hasAuthorship W4288075286A5064885254 @default.
- W4288075286 hasConcept C107673813 @default.
- W4288075286 hasConcept C115961682 @default.
- W4288075286 hasConcept C119857082 @default.
- W4288075286 hasConcept C153180895 @default.
- W4288075286 hasConcept C154945302 @default.
- W4288075286 hasConcept C159078339 @default.
- W4288075286 hasConcept C163294075 @default.
- W4288075286 hasConcept C2983327147 @default.
- W4288075286 hasConcept C33923547 @default.
- W4288075286 hasConcept C41008148 @default.
- W4288075286 hasConcept C81917197 @default.
- W4288075286 hasConceptScore W4288075286C107673813 @default.
- W4288075286 hasConceptScore W4288075286C115961682 @default.
- W4288075286 hasConceptScore W4288075286C119857082 @default.
- W4288075286 hasConceptScore W4288075286C153180895 @default.
- W4288075286 hasConceptScore W4288075286C154945302 @default.
- W4288075286 hasConceptScore W4288075286C159078339 @default.
- W4288075286 hasConceptScore W4288075286C163294075 @default.
- W4288075286 hasConceptScore W4288075286C2983327147 @default.
- W4288075286 hasConceptScore W4288075286C33923547 @default.
- W4288075286 hasConceptScore W4288075286C41008148 @default.
- W4288075286 hasConceptScore W4288075286C81917197 @default.
- W4288075286 hasLocation W42880752861 @default.
- W4288075286 hasOpenAccess W4288075286 @default.
- W4288075286 hasPrimaryLocation W42880752861 @default.