Klasifikasi Hama Serangga pada Pertanian Menggunakan Metode Convolutional Neural Network

Ar'rafi Akram, Kun Fayakun, Harry Ramza
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Abstract

Insect pest attacks pose a serious threat that can potentially cause significant losses in agricultural production. Therefore, the effective recognition and control of insect pests are crucial for maintaining agricultural productivity and quality of yields. With the advancement of computer technology and artificial intelligence, computer technology can be utilized to automatically recognize images in object recognition, particularly for insect pest classification using the Convolutional Neural Network (CNN) method with the Xception architecture. CNN is one of the types of deep feed-forward artificial neural networks widely used in digital image analysis and can process data in the form of grid patterns. CNN consists of three types of layers: convolutional layer, pooling layer, and fully connected layer. The use of CNN in this research aims to facilitate the classification of insect pests. The CNN process involves stages of training, testing, and validation on insect pests to determine the classification of images of various insect pest species. This research utilizes 1363 image samples with 13 classes of insect pests. The training process of CNN involves several parameters such as batch size, number of epochs, learning rate, and optimizer. The experiment's results indicate that the best accuracy achieved by this model is 93.81% during the training phase and 81.75% during the validation phase. This demonstrates that the model successfully performs insect pest classification using the CNN method.
利用神经联导网络对农业害虫的分类
害虫袭击构成严重威胁,可能对农业生产造成重大损失。因此,害虫的有效识别和防治对保持农业生产力和产量质量至关重要。随着计算机技术和人工智能的进步,在物体识别中可以利用计算机技术实现图像的自动识别,特别是采用Xception架构的卷积神经网络(Convolutional Neural Network, CNN)方法进行害虫分类。CNN是一种广泛应用于数字图像分析的深度前馈人工神经网络,可以以网格模式的形式处理数据。CNN由三种层组成:卷积层、池化层和全连接层。在本研究中使用CNN的目的是为了方便害虫的分类。CNN过程包括对害虫的训练、测试和验证阶段,以确定各种害虫物种的图像分类。本研究利用1363个图像样本,共13类害虫。CNN的训练过程涉及几个参数,如批大小、epoch数、学习率和优化器。实验结果表明,该模型在训练阶段和验证阶段的最佳准确率分别为93.81%和81.75%。这表明该模型成功地使用CNN方法进行了害虫分类。
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