A data mining approach for prediction of quality attributes in Palmer mango from images

Authors

DOI:

https://doi.org/10.5335/rbca.v12i2.10866

Keywords:

Image processing, Non destructive methods, Random Forest, Regression

Abstract

The monitoring of quality attributes such as, total soluble solids (TSS), mass, acidity and firmness are essential for a better postharvest conservation of mango.

This work proposes a non destructive approach for prediction of those quality attributes using digital images. The proposed approach is composed by three stages: 1) specification of the sampling parameters of mango, 2) identification of digital images pre-processing techniques and 3) utilization of the Random Forest technique as estimator of the quality attributes. In order to validate the proposed approach, a study comparing its performance with models found in literature was carried out. The study used two metrics of performance evaluation: the correlation coefficient (R) and the root mean square error (RMSE). In order to compare the differences of performance between the proposed approach and approaches found in literature, a paired t-student’s hypothesis test was carried out. Results show that the proposed approach has a superior performance regarding the existing ones, with confidence level of 95%.

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Published

2020-06-09

Issue

Section

Original Paper

How to Cite

[1]
2020. A data mining approach for prediction of quality attributes in Palmer mango from images. Brazilian Journal of Applied Computing. 12, 2 (Jun. 2020), 54–66. DOI:https://doi.org/10.5335/rbca.v12i2.10866.