Comparison of CNN Models With Transfer Learning in the Classification of Insect Pests

Angga Prima Syahputra, Alda Cendekia Siregar, Rachmat Wahid Saleh Insani
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Abstract

Insect pests are an important problem to overcome in agriculture. The purpose of this research is to classify insect pests with the IP-102 dataset using several CNN pre-trained models and choose which model is best for classifying insect pest data. The method used is the transfer learning method with a fine-tuning approach. Transfer learning was chosen because this technique can use the features and weights that have been obtained during the previous training process. Thus, computation time can be reduced and accuracy can be increased. The models used include Xception, MobileNetV3L, MobileNetV2, DenseNet-201, and InceptionV3. Fine-tuning and freeze layer techniques are also used to improve the quality of the resulting model, making it more accurate and better suited to the problem at hand. This study uses 75,222 image data with 102 classes. The results of this study are the DenseNet-201 model with fine-tuning produces an accuracy value of 70%, MobileNetV2 66%, MobileNetV3L 68%, InceptionV3 67%, Xception 69%. The conclusion of this study is that the transfer learning method with the fine-tuning approach produces the highest accuracy value of 70% in the DenseNet-201 model.
CNN模型与迁移学习在害虫分类中的比较
害虫是农业中需要克服的一个重要问题。本研究的目的是使用几种CNN预训练模型,使用IP-102数据集对害虫进行分类,并选择哪种模型最适合对害虫数据进行分类。所使用的方法是带有微调方法的迁移学习方法。之所以选择迁移学习,是因为这种技术可以使用在之前的训练过程中获得的特征和权重。因此,可以减少计算时间并且可以提高精度。使用的模型包括Xception、MobileNetV3L、MobileNetw2、DenseNet-201和InceptionV3。微调和冻结层技术也用于提高最终模型的质量,使其更准确,更适合当前的问题。本研究使用了102个类别的75222个图像数据。本研究的结果是,经过微调的DenseNet-201模型产生的准确度值为70%,MobileNetV2为66%,MobileNet V3L为68%,InceptionV3为67%,Xception为69%。本研究的结论是,在DenseNet-201模型中,采用微调方法的迁移学习方法产生了70%的最高精度值。
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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