智慧农业(中英文)2026,Vol.8Issue(1):28-39,12.
基于改进MobileViT模型的水稻病害识别算法与系统研发
Rice Disease Identification Method Based on Improved MobileViT Model and System Development
摘要
Abstract
[Objective]Under abiotic stress conditions,rice plants become fragile and susceptible to disease infection.Accurate diagno-sis and scientific prevention and control strategies for rice diseases are crucial for the prevention and control of rice diseases,even di-sasters such as blooding and high temperatures.However,under field natural environmental conditions,the identification of rice dis-eases is a challenging problem.There are various issues such as complex backgrounds,illumination changes,occlusion,which make it extremely difficult to comprehensively obtain disease information,thus significantly increasing the difficulty of disease identification.This study aims to develop an efficient rice disease recognition model by integrating the efficient channel attention(ECA)mechanism with the MobileViT model,enhancing the accuracy of rice disease identification in the field.Additionally,the rice disease knowledge graph was combined to achieve precise diagnosis and generate scientifically grounded control prescriptions for effective disease man-agement.[Methods]A total of 1 304 raw images of rice diseases were collected from different rice disease investigation and long-term monitoring points in Jiangsu province,at different periods of time,using mobile phones and cameras.167 disease images from the rice leaf disease image samples dataset were used to supplement the dataset.The raw images were accurately classified and prepro-cessed under the guidance of plant protection experts.A dataset containing 1 471 original images was constructed that includes seven types of rice diseases:bacterial leaf blight,false smut,leaf blast,bakanae disease,heart rot,grain discoloration,and panicle blast.The dataset was partitioned into training,validation,and test sets following a 7:1.5:1.5 ratio.Data augmentation techniques were applied exclusively to the training and validation sets to enhance sample diversity,while the test set remained unaugmented to preserve its in-dependence for unbiased model evaluation.Post-augmentation,the total image count increased to 7 735.A novel rice disease recogni-tion model was established by integrating the efficient channel attention(ECA)module into the MobileViT model.The recognition model architecture was optimized by improving convolutional structures,reconstructing Transformer encoding blocks,replacing acti-vation function using SiLU.To verify the performance of the model,cross validation and ablation experiments were conducted.After establishing a highly accurate recognition model,the recognition model was combined with the rice disease knowledge graph to achieve accurate diagnosis of rice diseases and generate scientific prevention and control strategies.Finally,an intelligent rice disease diagnostic system was developed using the Flask framework and cloud computing technologies.[Results and Discussions]The results of the ablation study revealed that the model,which combined convolutional layer optimization,Transformer block reconstruction,and the integration of the ECA module,got outstanding performance.The overall precision,F1-Score and recall rate achieved 97.27%,97.32%,and 97.46%,respectively.In terms of accuracy,the improved model increased to 97.25%,representing an improvement of 2.3%over the original model(94.95%).To further verify the effectiveness of the improved model,various mainstream models such as Swin Transformer,TinyVit,and ConvNeXt were compared with the proposed model.The experimental results showed that the im-proved model outperformed the suboptimal model(TinyVit)by 0.92,1.43,0.95,1.32 percent points in overall accuracy,F1-Score and recall rate,respectively.Moreover,the improved model showed significant advantages in terms of floating-point operations,model size,and parameter count,with a parameter count of only 6.02 MB,making it more suitable for deployment on hardware-constrained devices.Analysis of the confusion matrix and heatmap visualizations revealed that the enhanced model achieved recognition accuracy improvements of 0.6,0.3,0.3,and 0.6 percentage points for bacterial leaf blight,heart rot,grain discoloration,and panicle blast,re-spectively.The integrated system,combining this model with the knowledge graph,demonstrated significantly enhanced accuracy in disease identification and diagnosis.Meanwhile,the disease prevention and control strategies were generated to guide rice disease pre-vention and control.During field deployment,the rice disease diagnosis system achieved an accuracy rate as high as 98%,with an av-erage response time of 181 ms,demonstrating reliable real-time performance and stability.[Conclusions]By integrating ECA module and reconstructing Transformer encoding blocks,the MobileViT model achieved noticeable improvements in precision,recall and F1 score,while effectively reducing computational costs,leading to more efficient recognition capabilities of rice diseases in complex field environments.The application of the rice disease intelligent diagnosis system revealed that the system could achieve accurate rice disease diagnosis results,and generate disease prevention and control strategies for guide rice disease prevention and control.This method could effectively improve the prevention and control efficiency of rice diseases,providing technical support for improving the quality,efficiency,digitization and intelligence of rice production.关键词
水稻病害/作物表型/MobileViT模型/高效通道注意力/涝害防控Key words
rice disease/crop phenotype/MobileViT/efficient channel attention/flooding disaster prevention and control分类
信息技术与安全科学引用本文复制引用
刘晓君,吴茜,孙传亮,戚超,张谷丰,雷添杰,梁万杰..基于改进MobileViT模型的水稻病害识别算法与系统研发[J].智慧农业(中英文),2026,8(1):28-39,12.基金项目
国家重点研发计划项目(2023YFD2300300) (2023YFD2300300)
江苏省农业科技自主创新资金(ZSBBL-KY2023-01) National Key R&D Program(2023YFD2300300) (ZSBBL-KY2023-01)
Jiangsu Agricultural Science and Technology Innovation Fund(ZSBBL-KY2023-01) (ZSBBL-KY2023-01)