Crop and weed classification based on AutoML

Xuetao Jiang, Binbin Yong, Soheila Garshasbi, Jun Shen, Meiyu Jiang, Qingguo Zhou
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引用次数: 0

Abstract

CNN models already play an important role in classification of crop and weed with high accuracy, more than 95% as reported in literature. However, to manually choose and fine-tune the deep learning models becomes laborious and indispensable in most traditional practices and research. Moreover, the classic objective functions are not thoroughly compatible with agricultural farming tasks as the corresponding models suffer from misclassifying crop to weed, often more likely than in other deep learning application domains. In this paper, we applied autonomous machine learning with a new objective function for crop and weed classification, achieving higher accuracy and lower crop killing rate (rate of identifying a crop as a weed). The experimental results show that our method outperforms state-of-the-art applications, for example, ResNet and VGG19.
基于 AutoML 的作物和杂草分类
CNN 模型已经在作物和杂草分类中发挥了重要作用,其准确率高达 95% 以上。然而,在大多数传统实践和研究中,手动选择和微调深度学习模型变得费力且不可或缺。此外,经典的目标函数与农业耕作任务并不完全兼容,因为相应的模型存在将作物错误分类为杂草的问题,而这种情况往往比其他深度学习应用领域更容易发生。在本文中,我们将具有新目标函数的自主机器学习应用于作物和杂草分类,实现了更高的准确率和更低的作物致死率(将作物识别为杂草的比率)。实验结果表明,我们的方法优于最先进的应用,例如 ResNet 和 VGG19。
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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