基于机器视觉和人工智能的芒果分类系统

Nguyen Truong Thinh, Nguyen Duc Thong, Huynh Thanh Cong, Nguyen Tran Thanh Phong
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引用次数: 7

摘要

对芒果进行分类,有不同的颜色、重量、大小、形状和密度。目前,基于上述特征的分类主要是通过手册进行的,因为农民意识到准确率低、成本高、对健康的影响大、成本高、经济上成本低。芒果的内在品质,如甜度、硬度、陈年、脆性等,都是非常重要的,但只能通过外界或人类感知的评价来评估。因此,有必要利用人工神经网络来解决这一问题。本研究以越南三个主要的商品芒果品种为研究对象,寻找质量和准确度最好的芒果分类方法。世界上对芒果根据颜色、大小、体积进行分类的研究几乎都是在实验室完成的,但尚未在实践中应用。芒果果实的质量评价一直没有解决。应用图像处理技术,计算机视觉结合人工智能解决芒果分类或质量差的问题。这项研究的目标是创建一个系统,可以根据颜色、体积、大小、形状和果实密度对芒果进行分类。使用图像处理的分类系统结合了人工智能,包括使用CCD相机,C语言编程,计算机视觉和人工神经网络。该系统利用采集到的芒果图像,对分割层进行处理,确定芒果果实表面的质量、体积和缺陷。特别是,确定芒果的密度与成熟度和甜度有关,并确定芒果的缺陷百分比,以确定出口芒果和国内或回收芒果的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mango Classification System Based on Machine Vision and Artificial Intelligence
Sorting and Classification of mango, there are different colors, weights, sizes, shapes and densities. Currently, classification based on the above features is being carried out mainly by manuals due to farmers’ awareness of low accuracy, high costs, health effects and high costs, costly economically inferior. The internal quality of the mango such as sweetness, hardness, age, brittleness… is very important but is only estimated by external or human-perceived evaluation. Therefore, it is necessary to use artificial neural networks to solve this problem. This study was conducted on three main commercial mango species of Vietnam to find out the method of classification of mango with the best quality and accuracy. World studies of mango classification according to color, size, volume and almost done in the laboratory but not yet applied in practice. The quality assessment of mango fruit has not been resolved. Application of image processing technology, computer vision combined with artificial intelligence in the problem of mango classification or poor quality. The goal of the study is to create a system that can classify mangoes in terms of color, volume, size, shape and fruit density. The classification system using image processing incorporates artificial intelligence including the use of CCD cameras, C language programming, computer vision and artificial neural networks. The system uses the captured mango image, processing the split layer to determine the mass, volume and defect on the mango fruit surface. Especially, determine the density of mangoes related to its maturity and sweetness and determine the percentage of mango defects to determine the quality of mangoes for export and domestic or recycled mangoes.
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