基于深度网络和集成技术的植物病害检测

Saanidhya Vats, Vnad Chivukula
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引用次数: 0

摘要

日益增长的粮食安全是现代世界的一个重大问题。随着世界人口预计在未来30年将增加20亿,有必要增加粮食生产来支持不断增长的人口。近年来,全球粮食产量的增长已经放缓,速度太慢,无法跟上人口的增长。直接影响全球粮食生产的因素是干旱和植物病害。通过人工检查检测这些疾病是费时的,并且涉及人为错误的因素。本文主要研究植物病害的早期准确检测问题,以提高粮食产量。机器学习和基于深度学习的模型有可能通过快速准确地检测植物病害来解决这一问题。在这项工作中,我们首先分析了预训练深度学习模型在标准PlantVillage数据集的扩展版本上的性能,然后提出了深度学习模型的集成。所提出的集成模型优于所有现有的深度学习模型,达到99.61%的最高准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Disease Detection Using DeepNets and Ensemble Technique
Growing food security is a significant concern in the modern world. With the world's population expected to increase by two billion in the next three decades, there is a necessity to increase food production to support the growing population. In recent years, the increase in global food production has slowed, too slow to keep up with population growth. The factors directly affecting global food production are drought and plant diseases. Detection of these diseases through manual inspection is time taking and involves a factor of human error. In this paper, we focus on the problem of detecting plant diseases accurately at an early stage to increase food production. Machine learning and deep learning-based models have the potential to solve this issue by detecting plant diseases quickly and accurately. In this work, we first analyze the performance of pre-trained deep learning models on an expanded version of the standard PlantVillage dataset and then propose an ensemble of deep learning models. The proposed ensemble model outperforms all the existing deep learning models and achieves a maximum accuracy of 99.61%.
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