利用微调CNN模型估算植物叶片病害严重程度

Raj Kumar, A. Chug, A. Singh
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引用次数: 0

摘要

农作物病害严重影响农业收成的数量和质量。准确测量一种疾病的严重程度是至关重要的,因为它使农民能够对受到威胁的作物使用适当数量和种类的杀虫剂。对植物疾病严重程度的不正确估计可能导致农药的浪费或无效使用,甚至对研究人员和植物病理学家来说也是一项困难的任务。最近,机器视觉和深度学习方法在智能农业中的应用迅速增加。为了保障粮食安全,我们需要提高产量和改善作物质量,但这需要一种更精确和创新的方法来评估作物病害的严重程度。本研究提出了一种基于迁移学习的策略,利用学习后的VGG-16 / VGG-19 CNN网络估计番茄叶片疾病的严重程度,并在一个混合数据集上进行了测试,该数据集由佳能EOS 1500D相机在白背景下拍摄的现场图像和植物村数据集在受控实验室条件下拍摄的图像组成。此外,作者还对预训练的CNN模型的超参数进行了超调整,以提高其有效性。为了评估精细调整的CNN模型的有效性,该研究在训练和验证数据集上使用了多次迭代的精度和损失测量。与在同一数据集上评估的另一个CNN模型相比,VGG-16获得了更高的分类准确率(92.46%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Leaf Diseases Severity Estimation using Fine-Tuned CNN Models
The quantity and quality of agricultural harvests are both severely impacted by crop diseases. Accurately measuring the severity of a disease is vital because it allows farmers to use the appropriate amount and kind of pesticides on the crops that are threatened. Incorrect estimates of disease severity in plants can lead to wasteful or ineffective use of pesticides, making it a difficult assignment even for researchers and plant pathologists. Recently, there has been a rapid rise in the application of machine vision and deep learning methods to smart farming. To guarantee food security, we need to raise output and improve crop quality, but doing so requires a more precise and innovative method of assessing the severity of the crop disease. This research proposes a transfer-learning based strategy for estimating the severity of diseases on tomato leaves with the use of learned VGG-16 / VGG-19 CNN networks and tested on a hybrid dataset consisting of both images captured in the field with a Canon EOS 1500D camera on a white background and images captured under controlled laboratory conditions from the plant village dataset. In addition, the authors made hyper- adjustments to the hyperparameters of pre-trained CNN models to boost their efficacy. To evaluate the efficacy of finely tuned CNN models, the study uses accuracy and loss measurements over multiple iterations on training and validation datasets. When compared to another CNN model evaluated on the same dataset, VGG-16 was shown to obtain superior classification accuracy (92.46%).
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