2022
DOI: 10.1590/fst.38922
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Characteristic wavelengths selection of rice spectrum based on adaptive sliding window permutation entropy

Abstract: Due to the redundancy of rice spectral wavelengths and the strong correlation between adjacent wavelengths, the modeling classification accuracy based on traditional characteristic wavelengths selection methods is insufficient. Thus, a rice spectral characteristic wavelengths selection method based on adaptive sliding window permutation entropy (ASW-PE) was proposed in this paper. Firstly, the ASW-PE algorithm is constructed by combining the adaptive sliding window (ASW) method and permutation entropy (PE) met… Show more

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Cited by 4 publications
(3 citation statements)
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“…Hyperspectral data were collected from apple samples with different SSC. After the collection, ENVI software was used to select a circular region with a radius of 25 pixels as ROI, and the average spectral curve of each apple was obtained (Yang et al, 2022), and the spectral curve was processed by the continuum removal (Figure 4).…”
Section: Apple Spectrum Pretreatment Analysismentioning
confidence: 99%
“…Hyperspectral data were collected from apple samples with different SSC. After the collection, ENVI software was used to select a circular region with a radius of 25 pixels as ROI, and the average spectral curve of each apple was obtained (Yang et al, 2022), and the spectral curve was processed by the continuum removal (Figure 4).…”
Section: Apple Spectrum Pretreatment Analysismentioning
confidence: 99%
“…PLS is an excellent multivariate statistical data analysis method, which can simultaneously realize regression modeling (multiple linear regression), data structure simplification (principal component analysis) and correlation analysis (canonical correlation analysis) between two groups of variables. By projecting the high-dimensional data space of the independent variable and the dependent variable into the corresponding low-dimensional space, the orthogonal eigenvectors of the independent variable and the dependent variable are obtained respectively, and then the univariate linear regression relationship between the eigenvectors of the independent variable and the dependent variable is established (Yang et al, 2022). It is suitable for the model building when the sample size is small.…”
Section: Prediction Model Establishment For Apple Total Sugar Contentmentioning
confidence: 99%
“…However, the influence of various factors, such as lighting conditions, results in a large instability of spectral feature wavelengths, affecting the reliability and generalization ability of the detection model. At the same time, more methods do not consider the inter-band correlation in the screening process, resulting in the introduction of useless features or the omission of important information [16,17].…”
Section: Introductionmentioning
confidence: 99%