Classification of Leaf Disease Using Global and Local Features
Автор: Prashengit Dhar, Md. Shohelur Rahman, Zainal Abedin
Журнал: International Journal of Information Technology and Computer Science @ijitcs
Статья в выпуске: 1 Vol. 14, 2022 года.
Бесплатный доступ
Leaf disease of plants causes great loss in productivity of crops. So proper take care of plants is mandatory. Plants can be affected by various diseases. So Early diagnosis of leaf disease is a good practice. Computer vision-based classification of leaf disease can be a great way in diagnosing diseases early. Early detection of diseases can lead to better treatment. Vision based technology can identify disease quickly. Though deep learning is trending and using vastly for recognition task, but it needs very large dataset and also consumes much time. This paper introduced a method to classify leaf diseases using Gist and LBP (Local Binary Pattern) feature. These manual feature extraction process need less time. Combination of gist and LBP features shows significant result in classification of leaf diseases. Gist is used as global feature and LBP as local feature. Gist can describe an image very well as a scene. LBP is robust to illumination changes and occlusions and computationally simple. Various diseases of different plants are considered in this study. Gist and LBP features from images are extracted separately. Images are pre-processed before feature extraction. Then both feature matrix is combined using concatenation method. Training and testing is done on different plants separately. Different machine learning model is applied on the feature vector. Result from different machine learning algorithms is also compared. SVM performs better in classifying plant's leaf dataset.
Leaf disease, Gist, local binary pattern, machine learning
Короткий адрес: https://sciup.org/15018335
IDR: 15018335 | DOI: 10.5815/ijitcs.2022.01.05
Список литературы Classification of Leaf Disease Using Global and Local Features
- P. B. Padol and A. A. Yadav, "SVM classifier based grape leaf disease detection," 2016 Conference on Advances in Signal Processing (CASP), Pune, India, 2016, pp. 175-179, doi: 10.1109/CASP.2016.7746160.
- https://www.kaggle.com/vipoooool/new-plant-diseases-dataset.
- Sethy, P. K., Barpanda, N. K., Rath, A. K., & Behera, S. K. (2020). Deep feature based rice leaf disease identification using support vector machine. Computers and Electronics in Agriculture, 175, 105527. doi:10.1016/j.compag.2020.105527.
- R. Islam and M. R. Islam, “An image processing technique to calculatevpercentage of disease affected pixels of paddy leaf,” International Journal of Computer Applications, vol. 123, no. 12, pp. 28–34, 2015.
- R. Deshmukh, “Detection of paddy leaf diseases,” International Conference on Advances in Science and Technology, vol. 2, pp. 8–10, 2015.
- H. Wang, G. Li, Z. Ma, and X. Li, "Image recognition of plant diseases based on Backpropagation Networks," 5th Int. Congress on Image and Signal Processing (CISP), IEEE, 2012, pp. 894-900.
- G. Anthonys and N. Wickramarachchi, “An image recognition system for crop disease identification of paddy fields in Sri Lanka,” Int. Conf. on Industrial and Information Systems, IEEE, 2009, pp. 403-407.
- J.W Orillo, J.D. Cruz, L. Agapito, P J Satimbre, and I. Valenzuela, "Identification of diseases in rice plant (oryza sativa) using back propagation Artificial Neural Network." In Humanoid, Nanotechnology, Information Technology, Communication and Control, Environment and Management (HNICEM), 2014 International Conference on, pp. 1-6. IEEE, 2014.
- C.K.Charliepaul, "classification of rice plant leaf using feature matching," vol. 1, pp. 290-295, 2014.
- S. Phadikar, J. Sil, and A. Das, “Classification of rice leaf diseases based on morphological changes,” Int. Journal of Information and Electronics Engineering, vol. 2, no. 3, pp. 460-463, 2012.
- Mohammed Brahimi,KamelBoukhalfa and Abdelouahab Moussaoui, "Deep Learning for Tomato Diseases: Classification and Symptoms Visualization", applied artificial intelligence, 2017.
- Ramesh, S., and D. Vydeki. "Recognition and classification of paddy leaf diseases using Optimized Deep Neural network with Jaya algorithm", Information Processing in Agriculture (2019).
- K. P. Ferentinos, “Deep learning models for plant disease detection and diagnosis”, Computers and Electronics in Agriculture, vol. 145, pp. 311- 318, 2018.
- Ahmad IS, Reid JF, Paulsen MR, Sinclair JB. Color Classifier for Symptomatic Soybean Seeds Using Image Processing. Plant Dis. 1999 Apr;83(4):320-327. doi: 10.1094/PDIS.1999.83.4.320. PMID: 30845582
- J. W. Olmstead, A. Gregory, and G. A. Lang, “Assessment of severity of powdery mildew infection of sweet cherry leaves by digital image analysi‖, Hort science, 2001,vol. 36, pp.107– 111.
- Khirade, Sachin D., and A. B. Patil. "Plant disease detection using image processing." In 2015 International conference on computing communication control and automation, pp. 768-771. IEEE, 2015.
- Hossain, Eftekhar, Md Farhad Hossain, and Mohammad Anisur Rahaman. "A Color and Texture Based Approach for the Detection and Classification of Plant Leaf Disease Using KNN Classifier." In 2019 International Conference on Electrical, Computer and Communication Engineering (ECCE), pp. 1-6. IEEE, 2019.
- Ishak, Syafiqah, Mohd Hafiz Fazalul Rahiman, Siti Nurul Aqmariah, Mohd Kanafiahb, and Hashim Saadc. "Leaf disease classification using artificial neural network." Jurnal Teknologi 77, no. 17 (2015): 109-114.
- Venkataramanan, Aravindhan, Deepak Kumar P. Honakeri, and Pooja Agarwal, "Plant Disease Detection and Classification Using Dee Neural Networks", International Journal on Computer Science and Engineering (IJCSE), vol.11,no.8, 2019
- Ghaiwat, Savita N., and Parul Arora. "Detection and classification of plant leaf diseases using image processing techniques: a review." International Journal of Recent Advances in Engineering & Technology 2, no. 3 (2014): 1-7
- Singh, Vijai, and Ak K. Misra. "Detection of plant leaf diseases using image segmentation and soft computing techniques." Information processing in Agriculture 4, no. 1 (2017): 41-49.
- A. Oliva and A. Torralba, “Modeling the shape of the scene: A holistic representation of the spatial envelope,” Int. J. Comput. Vision, vol. 42, pp. 145–175, May 2001.
- T. Ojala, M. Pietikäinen, and T. Maenpaa, “Multiresolution gray-scale and rotation invariant texture classification with local binary patterns,” IEEE Trans. Pattern Analysis and Machine Intelligence, vol. 24, no. 7, pp. 971–987, 2002
- C Cortes and V Vapnik, "Support-vector networks," Machine learning, vol 20, pp 273-297, 1995
- D. Wettschereck and D. Thomas G, "Locally adaptive nearest neighbour algorithms", Adv. Neural Inf. Process. Syst., pp. 184-186, 1994
- L. Mason, J. Baxter, P. Bartlett and M. Frean, "Boosting algorithms as gradient descent", Proc. NIPS, pp. 1-7, 1999.
- Heba F. Eid, Ashraf Darwish, "Variant-Order Statistics based Model for Real-Time Plant Species Recognition", International Journal of Information Technology and Computer Science(IJITCS), Vol.9, No.9, pp. 77-84, 2017. DOI: 10.5815/ijitcs.2017.09.08
- Kohei Arai, Indra Nugraha Abdullah, Hiroshi Okumura,” Image Identification Based on Shape and Color Descriptors and Its Application to Ornamental Leaf ”, I.J. Image, Graphics and Signal Processing, 2013, pp. 1-8, I.J. Image, Graphics and Signal Processing, 2013, 10, 1-8
- Megha P Arakeri, Malavika Arun, Padmini R K,"Analysis of Late Blight Disease in Tomato Leaf Using Image Processing Techniques", International Journal of Engineering and Manufacturing(IJEM), Vol.5, No.4, pp.12-22, 2015.DOI: 10.5815/ijem.2015.04.02