Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Tomato Leaf Disease Identification Method Based on Improved YOLOX

View through CrossRef
In tomato leaf disease identification tasks, the high cost and consumption of deep learning-based recognition methods affect their deployment and application on embedded devices. In this study, an improved YOLOX-based tomato leaf disease identification method is designed. To address the issue of positive and negative sample imbalance, the sample adaptive cross-entropy loss function (LBCE−β) is proposed as a confidence loss, and MobileNetV3 is employed instead of the YOLOX backbone for lightweight model feature extraction. By introducing CBAM (Convolutional Block Attention Module) between the YOLOX backbone and neck network, the model’s feature extraction performance is increased. CycleGAN is used to enhance the data of tomato disease leaf samples in the PlantVillage dataset, solving the issue of an imbalanced sample number. After data enhancement, simulation experiments and field tests revealed that the YOLOX’s accuracy improved by 1.27%, providing better detection of tomato leaf disease samples in complex environments. Compared with the original model, the improved YOLOX model occupies 35.34% less memory, model detection speed increases by 50.20%, and detection accuracy improves by 1.46%. The enhanced network model is quantized by TensorRT and works at 11.1 FPS on the Jetson Nano embedded device. This method can provide an efficient solution for the tomato leaf disease identification system.
Title: Tomato Leaf Disease Identification Method Based on Improved YOLOX
Description:
In tomato leaf disease identification tasks, the high cost and consumption of deep learning-based recognition methods affect their deployment and application on embedded devices.
In this study, an improved YOLOX-based tomato leaf disease identification method is designed.
To address the issue of positive and negative sample imbalance, the sample adaptive cross-entropy loss function (LBCE−β) is proposed as a confidence loss, and MobileNetV3 is employed instead of the YOLOX backbone for lightweight model feature extraction.
By introducing CBAM (Convolutional Block Attention Module) between the YOLOX backbone and neck network, the model’s feature extraction performance is increased.
CycleGAN is used to enhance the data of tomato disease leaf samples in the PlantVillage dataset, solving the issue of an imbalanced sample number.
After data enhancement, simulation experiments and field tests revealed that the YOLOX’s accuracy improved by 1.
27%, providing better detection of tomato leaf disease samples in complex environments.
Compared with the original model, the improved YOLOX model occupies 35.
34% less memory, model detection speed increases by 50.
20%, and detection accuracy improves by 1.
46%.
The enhanced network model is quantized by TensorRT and works at 11.
1 FPS on the Jetson Nano embedded device.
This method can provide an efficient solution for the tomato leaf disease identification system.

Related Results

Evaluation of Selected Tomato Cultivars Effectiveness Against Tomato Yellow Leaf Curl Virus (TYLCV) and Its PCR-Based Molecular Detection
Evaluation of Selected Tomato Cultivars Effectiveness Against Tomato Yellow Leaf Curl Virus (TYLCV) and Its PCR-Based Molecular Detection
Viral diseases are the primary impediment to tomato cultivation. One of the most destructive viral diseases is Tomato yellow leaf curl virus (TYLCV) transmitted by the insect vecto...
Analysis of gender roles in tomato production in Municipal Area Council, Abuja, Nigeria
Analysis of gender roles in tomato production in Municipal Area Council, Abuja, Nigeria
This study analyzed gender roles in tomato production in Municipal Area Council, Abuja, Nigeria. The study described socio-economic characteristics of the tomato farmers, examined ...
Metal Surface Defect Detection Based on Metal-YOLOX
Metal Surface Defect Detection Based on Metal-YOLOX
Article Metal Surface Defect Detection Based on Metal-YOLOX Xiaoli Yue , Jiandong Chen , and Guoqiang Zhong * 1 College of Computer Science and Technology, Ocean University of C...
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct Introduction Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Development of a New Molecular Marker for the Resistance to Tomato Yellow Leaf Curl Virus
Development of a New Molecular Marker for the Resistance to Tomato Yellow Leaf Curl Virus
Tomato yellow leaf curl virus(TYLCV) responsible for tomato yellow leaf curl disease (TYLCD) causes a substantial decrease in tomato (Solanum lycopersicumL.) yield worldwide. The u...
Tomato Maturity Recognition with Convolutional Transformers
Tomato Maturity Recognition with Convolutional Transformers
Abstract Tomatoes are a major crop worldwide, and accurately classifying their maturity is essential for many agricultural applications, such as harvesting, grading, and qu...
Leaf phenology as an optimal strategy for carbon gain in plants
Leaf phenology as an optimal strategy for carbon gain in plants
Since leaves are essentially energy-gaining organs, the arrangement of leaves in time (leaf phenology) and in space (canopy architecture) in both seasonal and nonseasonal environme...

Back to Top