Mangoes are a great commercial fruit and are widely cultivated in tropical areas. In smart agriculture, the automatic quality inspection and grading application is essential to post-harvest processing, due to the laborious nature and inconsistencies of traditional manual visual grading. This paper presents a low-cost, efficient, and effective mango grading system based on image processing and machine learning methods to generate higher quality fruit sorting, quality maintenance, pro-duction, and cut back labor concentration. A novel database of classified mangoes was collected and built in An Giang province. Methodologies and algorithms that utilize digital image processing, content-predicated analysis, and statistical analysis are implemented to determine the grade of local mango pro-duction. On our collected dataset, the proposed system achieved overall with an overall accuracy of 88% for all mango grades. The system shows compromised results for higher-quality fruit sorting, quality maintenance, and production while reducing labor concentration.
CITATION STYLE
Doan, T. N., & Le-Thi, D. N. (2023). A Novel Mango Grading System Based on Image Processing and Machine Learning Methods. International Journal of Advanced Computer Science and Applications, 14(5), 1118–1129. https://doi.org/10.14569/IJACSA.2023.01405115
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