Pengenalan Jamur Yang Dapat Dikonsumsi Menggunakan Metode Transfer Learning Pada Convolutional Neural Network

Elok Iedfitra Haksoro, Abas Setiawan
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引用次数: 3

Abstract

Not all mushrooms are edible because some are poisonous. The edible or poisonous mushrooms can be identified by paying attention to the morphological characteristics of mushrooms, such as shape, color, and texture. There is an issue: some poisonous mushrooms have morphological features that are very similar to edible mushrooms. It can lead to the misidentification of mushrooms. This work aims to recognize edible or poisonous mushrooms using a Deep Learning approach, typically Convolutional Neural Networks. Because the training process will take a long time, Transfer Learning was applied to accelerate the learning process. Transfer learning uses an existing model as a base model in our neural network by transferring information from the related domain. There are Four base models are used, namely MobileNets, MobileNetV2, ResNet50, and VGG19. Each base model will be subjected to several experimental scenarios, such as setting the different learning rate values for pre-training and fine-tuning. The results show that the Convolutional Neural Network with transfer learning method can recognize edible or poisonous mushrooms with more than 86% accuracy. Moreover, the best accuracy result is 92.19% obtained from the base model of MobileNetsV2 with a learning rate of 0,00001 at the pre-training stage and 0,0001 at the fine-tuning stage.
基于卷积神经网络传递学习方法的消耗性肌肉识别
并不是所有的蘑菇都可食用,因为有些蘑菇有毒。食用或有毒蘑菇可以通过注意蘑菇的形态特征来识别,如形状、颜色和质地。有一个问题:一些有毒蘑菇的形态特征与食用蘑菇非常相似。这会导致蘑菇的误认。这项工作旨在使用深度学习方法识别可食用或有毒的蘑菇,通常是卷积神经网络。由于培训过程需要很长时间,因此采用迁移学习来加快学习过程。迁移学习通过从相关领域传递信息,使用现有模型作为我们神经网络中的基础模型。使用了四个基本模型,即MobileNets、MobileNetV2、ResNet50和VGG19。每个基本模型都将经历几个实验场景,例如设置不同的学习率值进行预训练和微调。结果表明,采用迁移学习方法的卷积神经网络能够识别可食用或有毒蘑菇,准确率超过86%。此外,从MobileNetsV2的基本模型中获得的最佳准确率为92.19%,在预训练阶段的学习率为000001,在微调阶段为00001。
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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