Pengembangan Sistem Pendeteksi Jenis Sayuran dengan Metode CNN Berbasis Android

Rere Setiyo Budiawan, B. Hartono
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引用次数: 0

Abstract

Vegetables are foodstuffs of plant origin that can be consumed fresh and have various health benefits. However, not a few people do not know the types of vegetables and will find it difficult to find the vegetables they want. This research aims to make it easier for people to find vegetables by classifying them. Researchers developed a model using the Convolutional Neural Network (CNN) method with a total of 15 datasets with a total of 3000 image data. Researchers conducted training datasets with 3 types of epochs, including 20 epochs, 50 epochs and 100 epochs. The training produces accuracy and training loss, with the highest accuracy belonging to Epoch 50 and Epoch 100 and the lowest level of training loss is owned by Epoch 100 with a total of 0.609. However, after the model was deployed, the accuracy results obtained were not as high as the tests conducted on Google Colab. Tests were carried out on several objects, including carrots with an accuracy of 69%, cabbage with an accuracy of 53%, and papaya with an accuracy of 82%. The difference in accuracy results may be caused by objects that are less identical to the datasets or can also be caused by imperfect models. Even so, this application can already be used to classify types of vegetables.
基于安卓系统的CNN绿色类型检测系统的开发
蔬菜是植物性食品,可以新鲜食用,对健康有多种益处。然而,不少人不知道蔬菜的种类,很难找到他们想要的蔬菜。这项研究旨在通过对蔬菜进行分类,让人们更容易找到蔬菜。研究人员使用卷积神经网络(CNN)方法开发了一个模型,共有15个数据集,共有3000个图像数据。研究人员进行了3种时期的训练数据集,包括20个时期、50个时期和100个时期。训练产生了准确性和训练损失,最高的准确性属于Epoch 50和Epoch 100,最低水平的训练损失属于Epoch100,总计0.609。然而,该模型部署后,获得的准确性结果不如在谷歌Colab上进行的测试高。对几个物体进行了测试,包括准确率为69%的胡萝卜、准确率为53%的卷心菜和准确率为82%的木瓜。精度结果的差异可能是由与数据集不太相同的对象引起的,也可能是由不完美的模型引起的。即便如此,该应用程序已经可以用于对蔬菜类型进行分类。
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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