To ensure global food security and the overall profit of stakeholders, the importance of correctly detecting and classifying plant diseases is paramount. In this connection, the emergence of deep learning-based image classification has introduced a substantial number of solutions. However, the applicability of these solutions in low-end devices requires fast, accurate, and computationally inexpensive systems. This work proposes a lightweight transfer learning-based approach for detecting diseases from tomato leaves. It utilizes an effective preprocessing method to enhance the leaf images with illumination correction for improved classification. Our system extracts features using a combined model consisting of a pretrained MobileNetV2 architecture and a classifier network for effective prediction. Traditional augmentation approaches are replaced by runtime augmentation to avoid data leakage and address the class imbalance issue. Evaluation on tomato leaf images from the PlantVillage dataset shows that the proposed architecture achieves 99.30% accuracy with a model size of 9.60MB and 4.87M floating-point operations, making it a suitable choice for real-life applications in low-end devices. Our codes and models are available at https://github.com/redwankarimsony/project-tomato.
翻译:为确保全球粮食安全和利益攸关方的总体利益,正确检测和分类植物疾病至关重要。在这方面,基于深层次学习的图像分类的出现带来了大量的解决办法。然而,这些解决方案在低端装置中的适用性需要快速、准确和计算成本低廉的系统。这项工作提出了一种轻量转移学习法,用于检测番茄叶的疾病。它使用一种有效的预处理方法,用污染校正来改进分类。我们的系统利用由预先培训的移动网络2结构以及有效预测的分类网络组成的综合模型提取了特征。传统的增强能力方法被运行时间强化所取代,以避免数据泄漏并解决阶级不平衡问题。植物病毒数据集对番茄叶图像的评估表明,拟议的结构实现了99.30%的准确性,模型尺寸为9.60MB和4.87M浮点操作,从而成为在低端装置中真实生活应用的适当选择。我们的代码和模型可在https://github.com/redwankarimny/project-tomato查阅。