利用深度学习模型进行草本植物叶片分类 efficientnetv2b0

Rakha Pradana Susilo Putra, Christian Sri Kusuma Aditya, G. Wicaksono
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引用次数: 0

摘要

植物科学取得了重大进展,尤其是在药用植物研究方面。药用植物一直被用于医药,如今仍然是健康世界的重要组成部分。在植物的各个部分中,叶子也是可以用作药物的部分之一。不过,能直接认出这些药叶的人并不多。这是因为草本植物的叶子乍一看几乎都是一样的,所以很难区分。本研究的目的是通过识别叶子图像的结构特征来对草药叶子图像进行分类。本研究的数据集使用了 10 类叶子图像,分别是杨桃、番石榴、酸橙、罗勒、芦荟、千层酥、板蓝根、木瓜、芹菜和槟榔,每类使用 350 张图像,共计 3500 张数据。之所以选择 EfficientNetV2B0 模型,是因为该模型的架构简约而高效。根据使用 EffiecientNetV2B0 模型的研究结果,测试数据的准确率为 99.14%,损失值为 1.95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HERBAL LEAF CLASSIFICATION USING DEEP LEARNING MODEL EFFICIENTNETV2B0
Science regarding plants has experienced significant progress, especially in the study of medicinal plants. Medicinal plants have been used in medicine and are still an important component in the world of health today. Among the various parts of the plant, the leaves are also one that can be used as medicine. However, not many people can recognize these herbal leaves directly. This is because the herbal leaves at first glance look almost the same, so it is difficult to differentiate them. The aim of this research is to classify herbal leaf images by identifying the structural features of the leaf images. The dataset in this study uses 10 classes of leaf images, namely, starfruit, guava, lime, basil, aloe vera, jackfruit, pandan, papaya, celery, and betel, where each class uses 350 images with a total of 3500 images of data. The EfficientNetV2B0 model was chosen because it has a minimalist architecture but has high effectiveness. Based on the results of research using the EffiecientNetV2B0 model, the accuracy was 99.14% and the loss value was 1.95% using test data.
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