Selvaraj R, Devasena M S Geetha
Department of Computer Science and Engineering, Dr.N.G.P. Institute of Technology, Coimbatore, Tamil Nadu, 641048, India.
Department of Computer Science and Engineering, Sri Ramakrishna Engineering College, Coimbatore, Tamil Nadu, 641022, India.
Sci Rep. 2025 May 18;15(1):17238. doi: 10.1038/s41598-025-02185-7.
Turmeric leaf disease detection is essential to maintain the crop health and optimize the yield. Through early identification disease can be controlled and its relevant economic losses can be avoided. However, the existing methods for leaf disease detection exhibit limitations in extracting complex leaf features which leads to lower classification accuracy. Also, the existing models often struggle to process the fine details in turmeric leaves which further reduces the reliability in real-world applications. The objective of this research is overcome these limitations through a novel leaf disease detection model which incorporates Vision Transformer (ViT) with hybrid Falcon-Bowerbird Optimization (FBO). The proposed approach aimed to attain improved feature extraction abilities which enhances the overall performance of turmeric leaf diseases detection process. In the first step turmeric images are preprocessed histogram equalization to highlight the complex features like leaf texture and color intensity then the image is divided into non-overlapping patches. The Vision Transformer process each patch as a token through a self-attention mechanism so that the most relevant patches can be processed to extract the essential features. The Hybrid Falcon-Bowerbird Optimization further enhance the convergence speed and fine-tune the hyperparameters to attain improved detection performances. Using turmeric leaf disease dataset, the performance of the proposed model is evaluated through metrics like precision, recall, F1-score and accuracy. With an accuracy of 97.03%, the proposed model outperforms AlexNet which achieved 95.5%, and optimized MobileNetv3 which achieved 96.8%. The proposed hybrid optimized ViT model attained superior performance in turmeric leaf disease detection in terms of accuracy compared to existing techniques.
姜黄叶病检测对于维持作物健康和优化产量至关重要。通过早期识别,可以控制病害并避免相关的经济损失。然而,现有的叶病检测方法在提取复杂的叶片特征方面存在局限性,这导致分类准确率较低。此外,现有模型在处理姜黄叶片的精细细节时往往存在困难,这进一步降低了在实际应用中的可靠性。本研究的目的是通过一种新颖的叶病检测模型来克服这些局限性,该模型将视觉Transformer(ViT)与混合猎鹰-园丁鸟优化(FBO)相结合。所提出的方法旨在获得改进的特征提取能力,从而提高姜黄叶病检测过程的整体性能。第一步,对姜黄图像进行直方图均衡化预处理,以突出叶片纹理和颜色强度等复杂特征,然后将图像划分为不重叠的补丁。视觉Transformer通过自注意力机制将每个补丁作为一个令牌进行处理,以便可以处理最相关的补丁以提取基本特征。混合猎鹰-园丁鸟优化进一步提高了收敛速度,并对超参数进行微调以获得改进的检测性能。使用姜黄叶病数据集,通过精度、召回率、F1分数和准确率等指标对所提出模型的性能进行评估。所提出的模型准确率为97.03%,优于AlexNet(准确率为95.5%)和优化后的MobileNetv3(准确率为96.8%)。与现有技术相比,所提出的混合优化ViT模型在姜黄叶病检测方面的准确率方面表现出卓越的性能。