Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure
Abstract
:1. Introduction
Contribution of This Study
- A deep learning-based classification system significantly improves the limitations of manual early wheat disease identification in Ethiopia’s agricultural sector.
- A more general crop disease identification deep learning model, which can be applied to other crop-disease image disease datasets, is created and, at the same time, provides a reference for wheat disease researchers to prevent and and control wheat diseases.
- Compared with deep learning models, this model achieves high accuracy in wheat disease image classification.
- Finally, to resolve the computation complexity, the proposed model was deployed on a Jetson GPU computing machine and an optimal classification accuracy was obtained.
2. Review of Related Works
Conventional Crop-Disease Classification Process
- Wheat varieties with a narrow genetic base results in genetic vulnerability and genetic erosion. Hence, genetic variability in wheat is very important for disease resistance.
- Genetic vulnerability is the susceptibility of most cultivated varieties of a crop species to various biotic diseases. Abiotic stresses due to similarities in their geno-types and the “gene-for-gene” theory also improves this reality for every resistance gene present in the host, and the pathogen has a gene for virulence.
- A susceptible reaction results when the pathogens are able to match (matching interaction/compatible interaction) all of the resistance genes that are present in the host with virulence genes. If one or more of the resistance genes are unmatched (non-matching interaction/incompatible interaction), a resistance reaction could result.
- Genetic resistance is governed by nuclear genes, cytoplasmic genes, or both. In other words, genetic resistance is an inbuilt mechanism or inherent property and it is measured in relation to susceptible wheat varieties or genotypes.
- Breeding of resistant cultivars considers the genetic variability of both diseases and the host plant, and the resistant variety may become susceptible after a few years due to the formation of new races or evolution of the pathogen.
- A new generation of variability in diseases may also develop through mutation, sexual reproduction, heterokaryosis, and para-sexual reproduction.
- Symptoms of several non-infectious or abiotic factors are similar to those caused by several viruses, and many root pathogens could lead to the wrong conclusion.
- Classification relies on phenotypic biochemical characteristics.
- A high skill level is necessary for optimal results.
- Contamination is a risk during disease identification in the laboratory.
- The process of identifying the specific disease types is time-consuming.
- The system lacked efficiency in generating new insights from existing data.
- There is no mechanism to fuse data with different variabilities to generate aggregated results for interpretation purposes.
- Data are continuously interpreted by multiple experts, which is labor-intensive and time-consuming.
3. Materials and Methods
3.1. Datasets
3.2. Data Processing
3.3. Computation Infrastructure
3.4. Deep Learning Models
4. Experiment Results and Discussion
4.1. Experiment on CPU and Experiment on GPU
4.2. Resnet50
5. Discussion and Summary
Model Performance Comparison
- The quality of the image datasets affected the performance of the models. Performing different preprocessing and postprocessing tasks enhances the features extracted from image data.
- Data format, rotations, image size variations, dark objects on the ground, and the application of different cameras also affected the model’s performance. Data standardization and utilization of high-quality cameras improve the bottleneck.
- As the number of epochs and the performance of the deep learning models also vary, so does the proper running of as many models as possible until the optimal performance is obtained.
- There are a number of activation functions. Thus, assessing and evaluating the different activation functions helps to select the best fit function.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
BARI | Bishoftu Agricultural Research Institute |
RGB | Red Green Blue |
TB | Terra Byte |
CNN | Convolutional Neural Network |
NWP | Numerical Weather Prediction |
SDM | Spore Dispersion Model |
PSD | Phone Survey Data |
ODK | Open Data Kit Survey Field Data |
EWS | Early Warning System |
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DL Models | Learnable Para | Time | Epoch | on CPU | on GPU |
---|---|---|---|---|---|
Inception V3 | 153,603 | 1.30 h | 10 | 95.03% | |
Inception v3 | 153,603 | 26 min | 15 | - | 95.65% |
Resnet50 | 301,059 | 2.10 h | 50 | - | 81.57% |
VGG16 | 75,267 | 29 min | 10 | - | 96.48% |
VGG19 | 75,267 | 36 min | 15 | - | 99.38% |
Author | Crop Diseases | Model | Training | Valid |
---|---|---|---|---|
Arun Pandian J [6] | Different crops | VGG16 | 87.03% | - |
Helal Sheikh [59] | ‘Maize’ and ‘Corn’ | CNN | 98.29% | 99.29% |
Divyansh Tiwari [60] | Potato (plant village) | VGG19 | 97.8% | 97.8% |
Xihai Zhang [61] | maize leaves | GoogLeNet | 89.6% | 98.9% |
Anshuman Singh [12] | Wheat disease | VGG19 | 96.6% | 91.3% |
Ashok [40] | Tomato leaf | CNN | 98.12% | |
Huiqun H [15] | Tomato disease | DXception | 97.10% | |
Mikhail G [30] | Wheat rust | Densenet | 98% | |
Sholihati R [7] | Potato disease | VGG19 | 91.% | |
Ours model | Wheat disease | VGG19 | 99.38% | 98.23% |
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Aboneh, T.; Rorissa, A.; Srinivasagan, R.; Gemechu, A. Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure. Technologies 2021, 9, 47. https://doi.org/10.3390/technologies9030047
Aboneh T, Rorissa A, Srinivasagan R, Gemechu A. Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure. Technologies. 2021; 9(3):47. https://doi.org/10.3390/technologies9030047
Chicago/Turabian StyleAboneh, Tagel, Abebe Rorissa, Ramasamy Srinivasagan, and Ashenafi Gemechu. 2021. "Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure" Technologies 9, no. 3: 47. https://doi.org/10.3390/technologies9030047
APA StyleAboneh, T., Rorissa, A., Srinivasagan, R., & Gemechu, A. (2021). Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure. Technologies, 9(3), 47. https://doi.org/10.3390/technologies9030047