Abstract
This paper presents survey on various techniques used to classify plants and its disease. Classification is concerned with classifying each sample into different classes. Classification is a method of separating a healthy and diseased leaf on its morphological features such as texture, color, shape, pattern and so on. Due to resemblance in the visual properties among plants, sorting and classification are complicated to carry out especially in large area. There are various methods based on image processing techniques and computer vision. Choosing the suitable classification technique is quite difficult as the result varies on different input data. Classification of leaf diseases in plants has wide applications in different fields such as agriculture and biological research. This paper provides a general idea of few existing methods, its pros and cons, state of art of different techniques used by several authors in leaf disease identification and classification such as preprocessing techniques, feature extraction and selection techniques, datasets used, classifiers and performance metrics. Apart from these some challenges and research gaps are identified and their probable solutions are pointed out.
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Abbreviations
- CNN:
-
Convolutional Neural network
- CHT:
-
Circular Hough Transform
- SVM:
-
Support Vector Machine
- DRNN:
-
Deep Residual Neural Network
- KNN:
-
K-Nearest Neighbor
- ABC:
-
Ant Bee Colony Optimization
- ROC:
-
Receiver Operating Characteristic
- IGA:
-
Improved Genetic Algorithm
- DL:
-
Deep Learning
- PCA:
-
Principal Component Analysis.
- HIS:
-
Hyperspectral Imaging
- ANN:
-
Artificial Neural Networks
- MCC:
-
Moving Center Classifier
- GA:
-
Genetic Algorithm
- DI:
-
Disease index
- PNN:
-
Probabilistic Neural Network
- LDC:
-
Linear Discriminant Classifier
- CNN:
-
Convolutional Neural network
- FNN:
-
Fuzzy Neural Network
- SURF:
-
Speeded Up Robust Features
- RF:
-
Random Forest
- PCA:
-
Principal Component Analysis
- FCM:
-
Fuzzy C-means Clustering
- PLS:
-
Partial Least Square
- IoU:
-
Intersection of Union
- CCR:
-
Correct Classification Rate
- HC:
-
Hierarchical Clustering
- UAVs:
-
Unmanned Aerial Vehicles
- ML:
-
Machine Learning
- LAI:
-
Leaf Area Index
- FE:
-
Feature Extraction
- BoWs:
-
Bag-of-words
- CA:
-
Classification Accuracy
- SAR:
-
Synthetic Aperture Radar
- GANs:
-
Generative Adversarial Networks
- PMI:
-
Powdery mildew index
- NN:
-
Neural Network
- CSM:
-
Chaotic spider monkey
- DNN:
-
Deep Neural Network
- YRI:
-
Yellow rust-index
- HSV:
-
Hue Saturation Value
- QNN:
-
Quantum Neural Network
- RGB:
-
Red Green Blue
- PSO:
-
Particle Swarm Optimization
- LBPs:
-
Local Binary Patterns
- FET:
-
Feature Extraction Technique
- GLCM:
-
Grey-Level Co-occurrence Matrix
- FRT:
-
Feature Reduction Technique
- SGDM:
-
Spatial Gray Level Dependence Matrix.
- DiffN:
-
Difference of Normal Orientations
- SIFT:
-
Scale Invariant and Feature Transformation
- DCNN:
-
Deep Convolutional Neural Network
- CLAHE:
-
Contrast Limited Adaptive Histogram Equalization
- SRCNN:
-
Super-Resolution Convolutional Neural Network
- SMOTE:
-
Synthetic Minority Over-Sampling Technique
- ANFIS:
-
Adaptive neuro-fuzzy inference System
- BRBFNN:
-
Bacteria Foraging Algorithm Radial Basis Function Neural Network
- YOP:
-
Year of Publication
- HPCCDD:
-
Homogeneous Pixel Counting Technique for Cotton Diseases Detection
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Acknowledgements
The authors would like to thank respected reviewers for their valuable and helpful comments. Further we would like to thank the Ministry of Human Resource Development, India and the National Institute of Technology Jamshedpur, India for financial assistance.
Funding
This research was supported by the National Institute of Technology Jamshedpur, India under the MHRD doctoral research fellowship.
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Bhagat, M., Kumar, D. A comprehensive survey on leaf disease identification & classification. Multimed Tools Appl 81, 33897–33925 (2022). https://doi.org/10.1007/s11042-022-12984-z
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DOI: https://doi.org/10.1007/s11042-022-12984-z