用集合学习法对复杂数据集进行黄瓜疾病分类

Franz Adeta Junior, Muhammad Rizki Nur Majiid
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引用次数: 0

摘要

许多研究人员都在考虑算法检测植物病害的能力,因为它可以节省开支并提供更准确的结果。然而,在检测病害,尤其是黄瓜植物的病害方面存在各种障碍,例如病害的相似性和模型适应所掌握信息的能力。针对这一问题,我们提出了一种基于平均法的集合学习策略,以提高模型对不同黄瓜植物环境的泛化能力。结果显示,集合学习方法的测试准确率为 94.20%,损失为 0.01105,优于特征融合方法。总体而言,特征融合和集合学习技术有可能提高模型对困难数据的分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cucumber Disease Classification with Ensemble Learning Method for Complex Datasets
Many researchers are taking into account the algorithm's ability to detect diseases in plants since it can save expenses and deliver more accurate results. However, there are various obstacles in detecting diseases, particularly in cucumber plants, such as disease similarities and the ability of models to adapt to the information they have. To address this issue, we propose an ensemble learning strategy based on the averaging method to improve the model's ability to generalize to different cucumber plant environments. According to the results, the ensemble learning approach outperforms the feature fusion method with a test accuracy of 94.20% and a loss of 0.01105. Feature fusion and ensemble learning techniques, in general, have the potential to increase the model's capacity to classify difficult data.
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