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โครงข่ายประสาทเทียมแบบคอนโวลูชันเชิงลึกสำหรับการจำแนกพรรณไม้ที่อยู่ในสิ่งแวดล้อมทางธรรมชาติ.

Authors :
สนุกแสน, จักรินทร์
สุรินต๊ะ, โอฬาริก
Source :
Journal of Science & Technology MSU; Mar/Apr2019, Vol. 38 Issue 2, p113-124, 12p
Publication Year :
2019

Abstract

This paper examines a deep convolutional neural network (Deep CNN) for plant recognition in the natural environment. The primary objective was to compare 4 CNN architectures including LeNet-5, AlexNet, GoogLeNet, and VGGNet on three plant datasets; PNE, 102 Flower, and Folio. The images in the PNE and 102 Flower dataset include a complicated background because they were taken in a natural environment. On the other hand, the images in the Folid dataset are only leaf images that were taken in a laboratory environment using a white background. The comparison of deep CNN using GoogLeNet and VGGNet Architecture show that GoogLeNet outperformed while working on the PNE and 102 Flower dataset when using a training time with iterations of 10,000 epochs. also faster than the VGGNet architecture. However, the experiment showed that the VGGNet architecture outperforms the other CNN architectures on the Folio dataset and used only 1,000 epochs for training. In our experiment, we can create a model from the deep CNN using GoogleNet architecture, and this is because it showed better results with the plant images that were taken in the natural environment. [ABSTRACT FROM AUTHOR]

Details

Language :
Thai
ISSN :
16869664
Volume :
38
Issue :
2
Database :
Complementary Index
Journal :
Journal of Science & Technology MSU
Publication Type :
Academic Journal
Accession number :
136532720