多数投票迁移学习CNN用于花生叶类型识别

Nur Nafiiyah, Nenden Siti Fatonah, Retno Wardhani, Bambang Jokonowo, Taghfirul Azhima Yoga Siswa
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引用次数: 1

摘要

在农业信息系统中,一种有效的识别植物的方法是通过它们的叶子,因为它们具有不同的特征和类型,容易,不损害树木,甚至不需要采摘。利用基于叶子的CNN (Resnet101、ResNet50、ResNet18、MobileNet V2、DenseNet201、GoogleNet)迁移学习进行植物物种导入的相关研究之前已经有过,但由于如何使用单片叶子识别花生植物物种,准确率平均值为82.97,因此仍然效果不佳。因此本研究提出了基于CNN迁移学习方法的Majority Voting,可以根据茎上所有叶子的叶子来有效地识别豆子的类型。提出的多数投票技术是基于最多数或占主导地位的阶级类型。选择建议的大多数花生叶片类型的数据集进行实验,分别是绿豆、大豆、长豆和花生叶片,总共有456张花生叶片图像。数据收集是通过直接在农民的土地上进行的。使用的CNN迁移学习模型是Resnet101、ResNet50、ResNet18、MobileNet V2、DenseNet201和GoogleNet。结果所提出的迁移学习的多数投票准确率为96.93。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Majority voting transfer learning CNN for peanut leaf types identification
In agricultural information systems, an effective way to identify plants is from their leaves because they have different characteristics and types, are easy, do not damage trees, and do not even need to be picked. Research related to the introduction of plant species using leaf-based CNN (Resnet101, ResNet50, ResNet18, MobileNet V2, DenseNet201, and GoogleNet) transfer learning has been carried out previously, but it is still not effective because of how to recognize peanut plant species using a single leaf and the accuracy value an average of 82.97. So this study proposes Majority Voting from the identification of the CNN transfer learning method to be able to effectively identify the type of bean based on the leaves of all the leaves on the stalk. The Majority Voting technique proposed is based on the type of class that is the most majority or dominant. Selection the proposed majority experimented with datasets of peanut leaf types, namely mung bean, soybean, long bean, and peanut leaves, a total dataset of 456 images of peanut leaves. Data collection is done by taking directly on the farmer’s land. The CNN transfer learning model used is Resnet101, ResNet50, ResNet18, MobileNet V2, DenseNet201, and GoogleNet. Results the Majority voting of proposed transfer learning has an accuracy of 96.93.
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