Non-destructive Estimation of Chlorophyll a Content in Red Delicious Apple Cultivar Based on Spectral and Color Data
Abstract
Non-destructive estimation of the chemical properties of fruit is an important goal of researchers in the food industry, since online operations, such as fruit packaging based on the amount of different chemical properties and determining different stages of handling, are done based on these estimations. In this study, chlorophyll a content in Red Delicious apple cultivar is predicted as a chemical property that is altered by apple ripening stage, using non-destructive spectral and color methods combined. Two artificial intelligence methods based on hybrid Multilayer Perceptron Neural Network - Artificial Bee Colony Algorithm (ANN-ABC) and Partial least squares regression (PLSR) were used in order to obtain a non-destructive estimation of chlorophyll a content. In application of the PLSR method, various pre-processing algorithms were used. In order to statistically properly validate the hybrid ANN-ABC predictive method, 20 runs were performed. Results showed that the best regression coefficient of the PLSR method in predicting chlorophyll a content using spectral data alone was 0.918. At the same time, the average determination coefficient over 20 repetitions in hybrid ANN-ABC in the estimation of chlorophyll a content, using spectral data and color features were higher than 0.92±0.040 and 0.89±0.045, respectively, which to our knowledge is a remarkable non-intrusive estimation result.
Keywords
References
- Adebayo SE, Hashim N & Abdan K, Hanafi M (2016a). Application and potential ofbackscattering imaging techniques in agricultural and food processing—a review. journal of Food Engineering 169:155–164
- Adebayo SE, Hashim N, Abdan K, Hanafi M & Mollazade K (2016b). Prediction of quality attributes and ripeness classification of bananasusing optical properties. Scientia Horticulturae 212:171–182
- Ali MM, Hashim N, Bejo SK & Shamsudin R (2017). Quality evaluation ofwatermelon using laser-induced backscattering imaging during storage postharvest. Biology and Technology 123: 51–59
- Amoriello T, Ciccoritti R, Paliotta M & Carbone K (2018). Classification and prediction of early-to-late ripening apricot quality using spectroscopic techniques combined with chemometric tools. Scientia Horticulturae 240: 310–317
- Arendse E, Fawole OA, Magwaza LS, Nieuwoudt H & Opara UL (2018). Evaluation of biochemical markers associated with the development of husk scald and the use of diffuse reflectance NIR spectroscopy to predict husk scald in pomegranate fruit. Scientia Horticulturae 232:240–249
- Cardenas-Perez S, Chanona-Perez J, Mendez-Mendez JV, Calderon-Domı´nguez G, Lopez-Santiago R, Perea-Flores MJ & Arzate-Vazquez I (2017). Evaluation of the ripening stages of apple (Golden Delicious) by means of computer vision system. Biosystem Engineering 159:46-58
- Cayuela JA (2008). Vis/NIR soluble solids prediction in intact oranges (Citrus sinensis L.) cv. Valencia Late by reflectance. Postharvest Biology and Technology 47: 75–80
- Clerici MTPS, Kallmann C, Gaspi FOG, Morgano MA, Martinez-Bustos F & Chang YK (2011). Physical, chemical and technological characteristics of Solanum lycocarpum A. St. - HILL (Solanaceae) fruit flour and starch. Food Research International 44: 2143–2150
Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Authors
Farzad Azadshahraki
This is me
0000-0002-7261-7849
Iran
Rouhollah Karimzadeh
This is me
0000-0001-6646-6274
Iran
Elham Ilbeygi
This is me
Iran
Publication Date
September 4, 2020
Submission Date
February 6, 2019
Acceptance Date
May 18, 2019
Published in Issue
Year 2020 Volume: 26 Number: 3