2021
DOI: 10.1016/j.patrec.2021.08.003
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Predicting soluble solids content in “Fuji” apples of different ripening stages based on multiple information fusion

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Cited by 7 publications
(3 citation statements)
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“…In addition, previous studies have also pointed out that using an image segmentation algorithm based on a BPNN to classify mangoes was more accurate than existing methods [ 36 ]. Based on the BPNN model, using the combined information of two color channels to predict the soluble solids of apples was better than using a single-channel model, which was consistent with the research results in this paper [ 37 ]. From the analysis of the confusion matrix of grape maturity judgment, it can be concluded that the accuracy of the two-factor combination method for the judgment of grape maturity was the best; specifically, the ability of this model was best for Xiang Yue, followed by Muscat Hamburg and then Drunk Incense ( Figure 9 ).…”
Section: Discussionsupporting
confidence: 90%
“…In addition, previous studies have also pointed out that using an image segmentation algorithm based on a BPNN to classify mangoes was more accurate than existing methods [ 36 ]. Based on the BPNN model, using the combined information of two color channels to predict the soluble solids of apples was better than using a single-channel model, which was consistent with the research results in this paper [ 37 ]. From the analysis of the confusion matrix of grape maturity judgment, it can be concluded that the accuracy of the two-factor combination method for the judgment of grape maturity was the best; specifically, the ability of this model was best for Xiang Yue, followed by Muscat Hamburg and then Drunk Incense ( Figure 9 ).…”
Section: Discussionsupporting
confidence: 90%
“…This helps to reduce the risk of overfitting and improve the generalization ability of the model. The SPA is a forward variable selection algorithm that eliminates redundant information in the original spectral matrix and minimizes the covariance of the variables in the spectrum [ 64 ]. CARS is a variable selection algorithm based on PLS and the Darwinian evolutionary principle of “survival of the fittest”, which filters the wavelengths by the size of absolute regression coefficients and excludes the variable bands with small weights [ 65 ].…”
Section: Hyperspectral Information Analysis Methods For Tea Fresh Lea...mentioning
confidence: 99%
“…Computer vision detection methods are based on grape color and shape, feature fusion, and deep learning. Information on the color channels in the L*a*b color space translated from RGB images was applied to extract color features, which has the potential for apple sugar content prediction [6]. A combination of visible-range image processing, image feature extraction, a hybrid imperialist competitive algorithm, and artificial neural network regression yielded a squared correlation coefficient (R 2 ) on the pH value of 0.843 ± 0.043 on a test set of Thomson navel oranges [7].…”
Section: Related Workmentioning
confidence: 99%