低数据体制下植物病害鉴定ssm网络

Shruti Jadon
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引用次数: 14

摘要

植物病害检测是提高农业产量的重要因素。由于病害检测困难,农民在作物上喷洒各种农药以保护作物,对作物生长和食品标准造成很大危害。深度学习可以为检测此类疾病提供关键帮助。然而,要收集大量关于影响某一特定植物物种的各种形式的疾病的数据是非常不方便的。在本文中,我们提出了一种新的基于度量的少镜头学习SSM网络架构,该架构由堆叠的暹罗和匹配的网络组件组成,以解决低数据状态下的疾病检测问题。我们在两个数据集上演示了我们的实验:微叶病和甘蔗病数据集。我们已经证明,SSM-Net方法可以获得更好的决策边界,在迷你叶子数据集上的准确率为92.7%,在甘蔗数据集上的准确率为94.3%。与广泛使用的VGG16迁移学习方法相比,准确率分别提高了10%和5%。此外,我们在甘蔗数据集上使用SSM Net获得了0.90的F1分数,在迷你叶片数据集上获得了0.91的F1分数。我们的代码实现可以在Github上获得:https://github.com/shrutijadon/PlantsDiseaseDetection。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SSM-Net for Plants Disease Identification in Low Data Regime
Plant disease detection is an essential factor in increasing agricultural production. Due to the difficulty of disease detection, farmers spray various pesticides on their crops to protect them, causing great harm to crop growth and food standards. Deep learning can offer critical aid in detecting such diseases. However, it is highly inconvenient to collect a large volume of data on all forms of the diseases afflicting a specific plant species. In this paper, we propose a new metrics-based few-shot learning SSM net architecture, which consists of stacked siamese and matching network components to address the problem of disease detection in low data regimes. We demonstrated our experiments on two datasets: mini-leaves diseases and sugarcane diseases dataset. We have showcased that the SSM-Net approach can achieve better decision boundaries with an accuracy of 92.7% on the mini-leaves dataset and 94.3% on the sugarcane dataset. The accuracy increased by 10% and 5% respectively, compared to the widely used VGG16 transfer learning approach. Furthermore, we attained F1 score of 0.90 using SSM Net on the sugarcane dataset and 0.91 on the mini-leaves dataset. Our code implementation is available on Github: https://github.com/shrutijadon/PlantsDiseaseDetection.
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