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  4. Transformations for non-destructive evaluation of brix in mango by reflectance spectroscopy and machine learning

Transformations for non-destructive evaluation of brix in mango by reflectance spectroscopy and machine learning

Author(s)
Ernesto Paiva-Peredo
Diego Gonzales-Rodriguez
W. T. Herrera
Christian Ovalle
Date Issued
14 de noviembre de 2023
Type
Article
Volume
14
Issue
1
Start Page
532
End Page
532
DOI
10.11591/ijece.v14i1.pp532-546
Abstract
Mango is a very popular climacteric fruit in America and Europe. Among the internal properties of the mango, total soluble solids (TSS) are an adequate indicator to estimate the quality of mango, however, the measurement of this indicator requires destructive tests. Several research have addressed similar issues; they have made use of pre-processing transformations without making it clear which of them is statistically better. Here, we created a new spectral database to build machine learning (ML) models. We analyzed a total of 18 principal component regression (PCR) models and 18 partial least squared regression (PLSR) models, where 4 types of transformations, 3 different feature extractors, and 3 different pre-processing techniques are combined. The research proposes a double cross validation (CV) both to determine the optimal number of components and to obtain the final metrics. The best model had a root mean square error (RMSE) of 1.1382 °Brix and a RMSE on the transformed scale of 0.5140. The best model used 4 components, used y<sup>2</sup> transformation, reflectance R as the independent variable and MSC as a pre-processing technique.
Subjects

Mean squared error

Principal component a...

Partial least squares...

Mathematics

Feature (linguistics)...

Transformation (genet...

Artificial intelligen...

Climacteric

Regression analysis

Regression

Pattern recognition (...

Statistics

Linear regression

Machine learning

Computer science

Chemistry

Biology

Philosophy

Linguistics

Biochemistry

Genetics

Menopause

Gene

Mean squared error

Principal component a...

Partial least squares...

Mathematics

Feature (linguistics)...

Transformation (genet...

Artificial intelligen...

Climacteric

Regression analysis

Regression

Pattern recognition (...

Statistics

Linear regression

Machine learning

Computer science

Chemistry

Biology

Physical Sciences Che...

Life Sciences Agricul...

Health Sciences Medic...

Metrics
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