Chili classification automation using deep learning with convolutional neural network method (Case study: Three types of chili with form of curly, cayenne and binocular)

Yolla Torina, Tuti Purwaningsih
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Abstract

Chili can be easily found in markets, minimarkets or large supermarkets, only the ones that are easily found are curly chili, cayenne pepper and binocular chili. Warehouse or storage is a place for storing goods both raw materials which are then processed or manufactured goods that are ready and marketed. CNN is a machine learning method in which the development of Multi-Layer Perceptron (MLP) is designed to process two-dimensional data. The purpose of this study is to classify the image of curly chili, cayenne and binoculars so that it becomes an input for warehousing to apply the CNN method in placing goods. Obtained the results of this study is the use of the best epoch value of 70 with 80%: 20% training testing dataset comparison scenarios and, obtained a classification accuracy of 70%, where, in the classification results of the predicted chili image according to the actual chili image only 10 image for curly chili and 7 image for cayenne image and 4 image for binocular chili image.
基于卷积神经网络方法的深度学习辣椒分类自动化(案例研究:卷、椒、双目三种辣椒)
辣椒在市场、小市场或大型超市都很容易买到,但最容易买到的是卷辣椒、红辣椒和双眼辣椒。仓库或仓库是储存货物的地方,包括原材料,然后加工或制成品,准备和销售。CNN是一种机器学习方法,其中多层感知器(multilayer Perceptron, MLP)的开发旨在处理二维数据。本研究的目的是对卷辣椒、辣椒和双筒望远镜的图像进行分类,使其成为仓储的输入,应用CNN方法放置货物。本研究得到的结果是利用最佳历元值70与80%:20%的训练测试数据集对比场景,得到的分类准确率为70%,其中,在分类结果中根据实际辣椒图像预测的辣椒图像只有10幅为卷曲辣椒图像,7幅为辣椒图像,4幅为双眼辣椒图像。
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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