基于CNN超带的番茄叶片病害分类超参数优化

Ardiansyah Kamal Alkaff, B. Prasetiyo
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引用次数: 4

摘要

卷积神经网络(CNN)已经成功地应用于图像分类,其中之一是植物或叶片病害。然而,选择最优的体系结构和超参数是其实现中的一个挑战。本研究的目的是优化卷积神经网络(CNN)超参数在番茄叶病分类中的应用。在本研究中,利用Hyperband对番茄叶病检测数据集进行了超参数卷积神经网络(CNN)的优化。该数据集由10000个训练数据和1000个测试数据组成,共10个类。在训练数据中,数据集的分布80%用于训练数据,20%用于数据验证。本研究使用Keras-Tuner库,旨在优化两个超参数,即密集神经元的数量和学习率。由超参数优化得到的最佳超参数值对于密集神经元的数量为128,对于学习率为0.001。该方法在训练阶段和验证阶段的准确率分别达到95.690%和88.50%。这些结果是通过50个epoch的模型训练得到的。此外,模型测试的准确率达到了88.60%。因此,利用Hyperband对卷积神经网络(CNN)进行超参数优化是选择最优结构和超参数的一种选择。
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Hyperparameter Optimization on CNN Using Hyperband on Tomato Leaf Disease Classification
Convolutional Neural Network (CNN) has been successfully applied to image classification, one of which is plant or leaf disease. However, choosing the optimal architecture and hyperparameters is a challenge in its implementation. The purpose of this study was to optimize the Convolutional Neural Network (CNN) hyperparameter on the classification of tomato leaf diseases. In this research, optimization of hyperparameter Convolutional Neural Network (CNN) using Hyperband on Tomato Leaf Disease Detection dataset. The dataset consists of 10,000 training data and 1,000 testing data with 10 classes. In the training data, the distribution of the dataset is 80% for training data and 20% for data validation. This study uses the Keras-Tuner library which aims to optimize two hyperparameters, namely the number of dense neurons and the learning rate. The best hyperparameter value resulting from hyperparameter optimization is 128 for the number of dense neurons and 0.001 for the learning rate. The proposed method succeeded in achieving an accuracy value of 95.690% in the training phase and 88.50% in the validation phase. These results were obtained from model training of 50 epochs. In addition, the model testing obtained an accuracy value of 88.60%. Therefore, hyperparameter optimization on Convolutional Neural Network (CNN) using Hyperband can be an alternative in choosing the optimal architecture and hyperparameters.
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