论文标题

基于暹罗网络的番茄叶病识别的轻量级框架

Siamese Network-based Lightweight Framework for Tomato Leaf Disease Recognition

论文作者

Thuseethan, Selvarajah, Vigneshwaran, Palanisamy, Charles, Joseph, Wimalasooriya, Chathrie

论文摘要

叶子图像的自动番茄疾病识别对于避免通过按时采取控制措施避免作物损失至关重要。尽管最近采用经典培训程序的基于深度学习的番茄疾病识别方法显示出令人鼓舞的识别结果,但它们仍需要大量标记的数据并涉及昂贵的培训。由于大量参数,针对番茄疾病识别的传统深度学习模型也消耗了高记忆和存储。尽管轻量级网络在一定程度上克服了其中的一些问题,但它们仍表现出低性能,并难以处理不平衡的数据。在本文中,提出了一个新型的基于暹罗网络的轻量级框架,用于自动番茄叶疾病识别。该框架可实现从PlantVillage数据集获得的番茄子集的最高精度,在台湾番茄叶疾病数据集上获得了95.48%的精度。实验结果进一步证实,所提出的框架在不平衡和小数据中有效。与此框架集成的骨干深网非常轻巧,约有29.66亿可训练的参数,该参数比现有的轻量级深网低。

Automatic tomato disease recognition from leaf images is vital to avoid crop losses by applying control measures on time. Even though recent deep learning-based tomato disease recognition methods with classical training procedures showed promising recognition results, they demand large labelled data and involve expensive training. The traditional deep learning models proposed for tomato disease recognition also consume high memory and storage because of a high number of parameters. While lightweight networks overcome some of these issues to a certain extent, they continue to show low performance and struggle to handle imbalanced data. In this paper, a novel Siamese network-based lightweight framework is proposed for automatic tomato leaf disease recognition. This framework achieves the highest accuracy of 96.97% on the tomato subset obtained from the PlantVillage dataset and 95.48% on the Taiwan tomato leaf disease dataset. Experimental results further confirm that the proposed framework is effective with imbalanced and small data. The backbone deep network integrated with this framework is lightweight with approximately 2.9629 million trainable parameters, which is way lower than existing lightweight deep networks.

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