A framework for leaf disease analysis and estimation using MAML with DeepLabV3

Arunangshu Pal, Vinay Kumar, Khondekar Lutful Hassan, Binod Kumar Singh
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Abstract

In the dynamic field of agriculture, the prompt and accurate identification of plant diseases plays a crucial role in ensuring strong crop yields. To address this need, we present an innovative framework that combines Model Agnostic Meta-Learning (MAML) with DeepLabV3 to identify plant diseases precisely and assess their severity. Deep Plant Guard utilizes the outstanding segmentation capabilities of DeepLabV3 to pinpoint areas of diseased plants while simultaneously determining the specific type of disease and its severity level. The framework is enhanced by Bayesian task augmentation-MAML with multi-scale spatial attention, allowing for swift fine-tuning even with limited data. During training, a composite loss function harmonizes segmentation and classification efforts. Following meta-training excels in adapting to new tasks, providing detailed segmentation masks, and offering valuable insights into disease type and severity. Evaluation results, based on datasets such as Plant Village, Plant Doc, and a newly introduced plant disease dataset, showcase impressive results, including a 99.1% accuracy rate, 99.5% sensitivity, and 98.7% specificity. These results highlight the framework's effectiveness in addressing disease types and severity assessments.

Abstract Image

利用 MAML 和 DeepLabV3 进行叶片病害分析和估计的框架
在充满活力的农业领域,及时准确地识别植物病害对确保作物高产起着至关重要的作用。为了满足这一需求,我们提出了一个创新框架,将模型无关元学习(MAML)与 DeepLabV3 相结合,以精确识别植物病害并评估其严重程度。深度植物卫士利用 DeepLabV3 出色的分割能力来精确定位植物病害区域,同时确定病害的具体类型及其严重程度。该框架通过具有多尺度空间注意力的贝叶斯任务增强--MAML 得到了增强,即使在数据有限的情况下也能迅速进行微调。在训练过程中,复合损失函数协调了分割和分类工作。经过元训练后,可以很好地适应新任务,提供详细的分割掩码,并对疾病类型和严重程度提供有价值的见解。基于植物村、植物文档和新引入的植物疾病数据集的评估结果令人印象深刻,包括 99.1% 的准确率、99.5% 的灵敏度和 98.7% 的特异性。这些结果凸显了该框架在处理病害类型和严重程度评估方面的有效性。
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