Machine learning based classification of ripening and decay stages of Mango (Mangifera indica L.) cv. Tom EJC

H. M. W. M. Hippola, Deepika Priyadarshani Wadumesthri, R. Rajakaruna, Lasith Yasakethu, M. Rajapaksha
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引用次数: 1

Abstract

Tom EJC is a variety of Mango grown in tropical countries like Sri Lanka and India which has a very large demand and hence expensive. From the early stage of ripening, until the senescence stage, the process takes around 10–14 days. The fruit shows a yellowish color starting from the very early stage of ripening, throughout the period until it reaches the senescence stage. Unlike the other Mango varieties, it is difficult for a regular customer to determine the stage of ripening of the Tom EJC fruit, by observation. This paper focuses towards developing a vision-based classifier to rapidly identify ripening and decay stages of Tom EJC mango using surface image captures. A dataset of Tom EJC mango images was collated at different maturity levels. A Convolutional Neural Network (CNN) is proposed and tested using over 6000 Tom EJC images. The proposed model is shown to have a 76% testing accuracy in identifying four stages of maturity.
基于机器学习的芒果成熟期和衰退期分类研究。汤姆EJC
Tom EJC是一种生长在斯里兰卡和印度等热带国家的芒果,需求量很大,因此价格昂贵。从成熟的早期阶段,直到衰老阶段,这个过程大约需要10-14天。果实从成熟的早期阶段开始就呈现黄色,一直持续到衰老阶段。与其他芒果品种不同,普通顾客很难通过观察来确定汤姆EJC果实的成熟阶段。本文的重点是开发一种基于视觉的分类器,利用表面图像捕获快速识别Tom EJC芒果的成熟和腐烂阶段。整理了不同成熟度的Tom EJC芒果图像数据集。提出了一种卷积神经网络(CNN),并使用6000多张Tom EJC图像进行了测试。所提出的模型在识别四个成熟度阶段方面具有76%的测试准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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