4.7 Article

Optimizing spatial data reduction in hyperspectral imaging for the prediction of quality parameters in intact oranges

Journal

POSTHARVEST BIOLOGY AND TECHNOLOGY
Volume 176, Issue -, Pages -

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ELSEVIER
DOI: 10.1016/j.postharvbio.2021.111504

Keywords

Internal quality; Visible and near infrared hyperspectral imaging; Artificial neural network; Spatial data reduction

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This study evaluated the use of hyperspectral imaging and artificial neural network to develop prediction models for quantitative mapping of quality attributes in intact oranges. Different levels of pixel binning were tested to find the best models, showing the potential of using larger spatial binning for developing prediction models for taste attributes in intact oranges.
This study evaluated hyperspectral imaging (900?1700 nm) and the optimal binning strategy for the reduction of spatial data to obtain quantitative maps of some quality attributes in intact oranges. Artificial neural network (ANN) was used to develop prediction models using 198 oranges. Different levels of pixel binning were tested for predicting the samples of an external test set (N = 66). The best models obtained achieved root mean square error of cross validation (RMSECV) values of 0.87 %, 0.23 g L-1, 2.78 and 1.11 for SSC, TA, MI and BrimA, respectively. Models were then applied to different spatial resolution sample images. The coefficients of determination (R2) and the root mean square error of prediction (RMSEP) values for the test set were then compared. A chemical image was developed to display the distribution of SSC, TA, MI and BrimA in the binned images of the orange fruit, demonstrating the potential of using a 10 ? 10 spatial binning (corresponding to a 99 % reduction in the original dataset) to develop prediction models for quantifying taste attributes in intact oranges.

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