Comparison Study of Convolutional Neural Network Architecture in Aglaonema Classification

Yessi Mulyani, Dzihan Septiangraini, M. A. Muhammad, G. F. Nama
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Abstract

Convolutional Neural Network (CNN) is very good at classifying images. To measure the best CNN architecture, a study must be done against real-case scenarios. Aglaonema, one of the plants with high similarity, is chosen as a test case to compare CNN architecture. In this study, a classification process was carried out on five classes of Aglaonema imagery by comparing five architectures from the Convolutional Neural Network (CNN) method: LeNet, AlexNet, VGG16, Inception V3, and ResNet50. The total dataset used is 500 image data, with the distribution of training data by 80% and test data by 20%. The segmentation process is performed using the Grabcut algorithm by separating the foreground and background. To build a model for CNN architecture using Google Colab and Google Drive storage. The results of the tests carried out on five classes of Aglaonema images obtained the best accuracy, precision, and recall results on the Inception V3 architecture with values of 92.8%, 93%, and 92.8%. The CNN architecture has the highest level of accuracy in classifying aglaonema plant types based on images. This study seeks to close research gaps, contribute to the field of research, and serve as a platform for primary prevention research.
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卷积神经网络结构在Aglaonema分类中的比较研究
卷积神经网络(CNN)在图像分类方面非常出色。为了衡量最好的CNN架构,必须针对实际情况进行研究。Aglaonema是具有高度相似性的植物之一,被选择作为比较CNN建筑的测试案例。在本研究中,通过比较卷积神经网络(CNN)方法的五种架构:LeNet、AlexNet、VGG16、Inception V3和ResNet50,对5类Aglaonema图像进行分类。使用的总数据集为500张图像数据,其中训练数据占80%,测试数据占20%。分割过程使用Grabcut算法通过分离前景和背景来完成。使用Google Colab和Google Drive存储为CNN架构构建模型。对5类Aglaonema图像的测试结果表明,在Inception V3架构上,准确率、精密度和查全率分别为92.8%、93%和92.8%。CNN架构在基于图像的aglaonema植物类型分类中具有最高的准确性。这项研究旨在缩小研究差距,为研究领域做出贡献,并作为初级预防研究的平台。
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