Fruit Ripeness Classification System Using Convolutional Neural Network (CNN) Method

F. B. Setiawan, Christophorus Bramantya Adipradana, L. Pratomo
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Abstract

The increasing consumer demand in the fruit industry has also demanded that various sectors of the fruit processing industry be able to adapt to this situation. The demand for good quality and fresh fruit requires technological advances and supporting systems that can be used in the fruit processing industry to produce the best quality fruit. Referring to this, this study aims to detect the type and maturity of fruit using machine learning with the CNN (Convolutional Neural Network) method using the function of a camera that is integrated with the program algorithm. This research is a refinement of previous research that has been made at the university by increasing the ability to read objects based on color with different methods. In this programming language, Python also requires several additional libraries to carry out the object detection process, namely by using the cvzone library as the main library. This study shows that the detection of fruit and ripeness using the CNN method was successful in detecting the type and maturity of the fruit. In the design and trial of this research, it can run well according to the algorithm created by the researcher. The success rate and accuracy of the detection of the type and maturity of this fruit reach 90%.
使用卷积神经网络(CNN)方法的水果成熟度分类系统
水果行业日益增长的消费需求也要求水果加工行业的各个部门能够适应这种情况。对优质和新鲜水果的需求需要技术进步和支持系统,这些技术和系统可以用于水果加工业,以生产出最优质的水果。因此,本研究的目的是利用与程序算法相结合的摄像头功能,利用CNN(卷积神经网络)方法进行机器学习,检测水果的种类和成熟度。这项研究是对之前在该大学进行的研究的改进,该研究通过不同的方法提高了根据颜色阅读物体的能力。在这种编程语言中,Python还需要几个额外的库来执行对象检测过程,即使用cvzone库作为主库。本研究表明,利用CNN方法对水果的种类和成熟度进行检测是成功的。在本研究的设计和试验中,它可以按照研究者创建的算法运行良好。该果实品种和成熟度的检测成功率和准确率达到90%。
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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