Efficacy of Deep Learning Algorithm in Classifying Chilli Plant Growth Stages

Danial Mirza Muammar Rozilan, M. Hanafi, Roslizah Ali, Mohd Adib Razak, C. Hairu
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引用次数: 2

Abstract

Automatic plant growth monitoring has received considerable attention in recent years. The demand in this field has created various opportunities, especially for automatic classification using deep learning methods. In this paper, the efficiency of deep learning algorithms in classifying the growth stage of chili plants is studied. Chili is one of the high cash value crops, and automatic identification of chili plant growth stages is essential for crop productivity. Nevertheless, the study on automatic chili plant growth stage classification using deep learning approaches is not widely explored, and this is due to the unavailability of public datasets on the chili plant growth stages. Various deep learning methods, namely Inception V3, ResNet50, and VGG16, were used in the study, and the results have shown that these methods performed well in terms of accuracy and stability when tested on a dataset that consists of 2,320 images of Capsicum annum 'Bird's Eye' plants of various growth stages and imaging conditions. Nevertheless, the results have also shown that the deep learning methods have difficulty classifying images with a complex background where more than one chili plant was captured in an image.
深度学习算法在辣椒植物生长阶段分类中的效果
近年来,植物生长自动监测受到了广泛的关注。该领域的需求创造了各种机会,特别是使用深度学习方法的自动分类。本文研究了深度学习算法在辣椒植物生长阶段分类中的有效性。辣椒是我国经济价值较高的作物之一,辣椒植株生长阶段的自动识别对提高作物生产效率具有重要意义。然而,利用深度学习方法进行辣椒植物生长阶段自动分类的研究并不广泛,这是由于辣椒植物生长阶段的公共数据集不可用。研究中使用了Inception V3、ResNet50和VGG16等多种深度学习方法,结果表明,这些方法在2320张不同生长阶段和成像条件的辣椒“鸟眼”植物图像数据集上进行了测试,在准确性和稳定性方面表现良好。然而,研究结果也表明,深度学习方法很难对复杂背景下的图像进行分类,因为在一张图像中捕获了多个辣椒植物。
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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