Sinamenye Jackson Herbert, Chatterjee Ayan, Shrestha Raju
Department of Computer Science, Oslo Metropolitan University (OsloMet), Oslo, Norway.
Department of Digital Technology, STIFTELSEN NILU, Kjeller, Norway.
BMC Plant Biol. 2025 May 16;25(1):647. doi: 10.1186/s12870-025-06679-4.
Agriculture, a crucial sector for global economic development and sustainable food production, faces significant challenges in detecting and managing crop diseases. These diseases can greatly impact yield and productivity, making early and accurate detection vital, especially in staple crops like potatoes. Traditional manual methods, as well as some existing machine learning and deep learning techniques, often lack accuracy and generalizability due to factors such as variability in real-world conditions. This study proposes a novel approach to improve potato plant disease detection and identification using a hybrid deep-learning model, EfficientNetV2B3+ViT. This model combines the strengths of a Convolutional Neural Network - EfficientNetV2B3 and a Vision Transformer (ViT). It has been trained on a diverse potato leaf image dataset, the "Potato Leaf Disease Dataset", which reflects real-world agricultural conditions. The proposed model achieved an accuracy of 85.06 , representing an 11.43 improvement over the results of the previous study. These results highlight the effectiveness of the hybrid model in complex agricultural settings and its potential to improve potato plant disease detection and identification.
农业作为全球经济发展和可持续粮食生产的关键部门,在作物病害检测和管理方面面临重大挑战。这些病害会对产量和生产力产生重大影响,因此早期准确检测至关重要,尤其是对于像土豆这样的主粮作物。传统的人工方法以及一些现有的机器学习和深度学习技术,由于现实世界条件的变化等因素,往往缺乏准确性和通用性。本研究提出了一种新方法,使用混合深度学习模型EfficientNetV2B3+ViT来改进土豆植株病害的检测和识别。该模型结合了卷积神经网络EfficientNetV2B3和视觉Transformer(ViT)的优势。它在一个多样化的土豆叶片图像数据集“土豆叶病害数据集”上进行了训练,该数据集反映了现实世界的农业状况。所提出的模型准确率达到了85.06%,比之前研究的结果提高了11.43%。这些结果凸显了混合模型在复杂农业环境中的有效性及其改进土豆植株病害检测和识别的潜力。