Department of Computer Science and Engineering, BRAC University, Dhaka 1212, Bangladesh.
School of Computing, Gachon University, Seongnam 13120, Republic of Korea.
Sensors (Basel). 2023 Apr 5;23(7):3751. doi: 10.3390/s23073751.
Tomato leaf diseases can incur significant financial damage by having adverse impacts on crops and, consequently, they are a major concern for tomato growers all over the world. The diseases may come in a variety of forms, caused by environmental stress and various pathogens. An automated approach to detect leaf disease from images would assist farmers to take effective control measures quickly and affordably. Therefore, the proposed study aims to analyze the effects of transformer-based approaches that aggregate different scales of attention on variants of features for the classification of tomato leaf diseases from image data. Four state-of-the-art transformer-based models, namely, External Attention Transformer (EANet), Multi-Axis Vision Transformer (MaxViT), Compact Convolutional Transformers (CCT), and Pyramid Vision Transformer (PVT), are trained and tested on a multiclass tomato disease dataset. The result analysis showcases that MaxViT comfortably outperforms the other three transformer models with 97% overall accuracy, as opposed to the 89% accuracy achieved by EANet, 91% by CCT, and 93% by PVT. MaxViT also achieves a smoother learning curve compared to the other transformers. Afterwards, we further verified the legitimacy of the results on another relatively smaller dataset. Overall, the exhaustive empirical analysis presented in the paper proves that the MaxViT architecture is the most effective transformer model to classify tomato leaf disease, providing the availability of powerful hardware to incorporate the model.
番茄叶病害会对作物造成严重的经济损失,因此成为全世界番茄种植者关注的主要问题。这些病害可能有多种形式,由环境压力和各种病原体引起。一种从图像中自动检测叶片病害的方法可以帮助农民快速、经济地采取有效控制措施。因此,本研究旨在分析基于变压器的方法对特征变体的影响,这些方法可以对番茄叶病从图像数据的分类进行不同尺度的关注。本研究训练和测试了四种最先进的基于变压器的模型,即外部注意力变压器(EANet)、多轴视觉变压器(MaxViT)、紧凑卷积变压器(CCT)和金字塔视觉变压器(PVT),用于一个多类番茄病害数据集。结果分析表明,MaxViT 以 97%的整体准确率轻松超越了其他三种变压器模型,而 EANet 的准确率为 89%,CCT 的准确率为 91%,PVT 的准确率为 93%。与其他变压器相比,MaxViT 还具有更平滑的学习曲线。之后,我们在另一个相对较小的数据集上进一步验证了结果的合法性。总的来说,本文进行的详尽实证分析证明,MaxViT 架构是分类番茄叶病的最有效变压器模型,为整合该模型提供了强大的硬件支持。