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http://mfuir.mfu.ac.th:80/xmlui/handle/123456789/653
Title: | Artificial intelligence models for variety and maturity classification of Thai commercial mangoes |
Authors: | Phanuphong Suthawas |
metadata.dc.contributor.advisor: | Sujitra Arwatchananukul |
Keywords: | Maturity;Variety;Prediction;Machine Learning;Deep Learning;InceptionV3;Random Forest;Classification |
Issue Date: | 2024 |
Publisher: | Mae Fah Luang University. Learning Resources and Educational Media Centre |
Abstract: | Thailand is one of the world’s largest mango producers and exporters, where traditional grading methods rely on farmers assessing characteristics like color, texture, size, and shape. These methods, however, can be inconsistent. This study presents an AI-driven approach for automated mango classification, consisting of two stages: variety classification using a Random Forest classifier and maturity classification using machine learning and deep learning models. The Random Forest classifier, after hyperparameter tuning, achieved a remarkable accuracy of 99.63% for mango variety classification. Following this, mangoes are categorized into three maturity grades: Immaturity (M1), Exporting Maturity (M2), and Domestic Maturity (M3). The highest maturity classification accuracies were 80.00% for Mahachanok using InceptionV3, 84.40% for Namdokmai Sithong using Gradient Boosting, and 83.33% for R2E2 using Random Forest. Both models were integrated into a real-time web application, providing an efficient and scalable solution for mango classification, improving consistency and productivity in the agricultural sector. |
Description: | Thesis (M.Sc.) -- Digital Transformation Technology, School of Applied Digital Technology. Mae Fah Luang University, 2024 |
URI: | http://mfuir.mfu.ac.th:80/xmlui/handle/123456789/653 |
Appears in Collections: | วิทยานิพนธ์ (Thesis) |
Files in This Item:
File | Description | Size | Format | |
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139700-Fulltext.pdf | Fulltext | 3.79 MB | Adobe PDF | View/Open |
139700-Abstract.pdf | Abstract | 58.58 kB | Adobe PDF | View/Open |
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