DETECTION AND CLASSIFICATION OF PLANT LEAF DISEASES USING DIGTAL IMAGE PROCESSING METHODS: A REVIEW

Authors

  • Lele Mohammed Faculty of Computing, Universiti Teknologi Malaysia, 81310 UTM Johor Bahru, Johor, Malaysia
  • Yusliza Yusoff Faculty of Computing, Universiti Teknologi Malaysia, 81310 UTM Johor Bahru, Johor, Malaysia

DOI:

https://doi.org/10.11113/aej.v13.17460

Keywords:

Classification, Computerized, Image Processing, Plant Diseases, CNN.

Abstract

Prediction and classification of plant leaf illnesses by farmers using conventional approaches can be unexciting and erroneous. Problems may occur while trying to predict the sort of illnesses manually. Inability to detect diseases of plants promptly could lead to the destruction of crop plants and this can cause serious decline in the yield. Losses can be prevented and yield be maximized when farmers adopt computerized image processing approaches in their farms. Numerous techniques have been proposed and used in the prediction of diseases of crop plants based on the images of the infected leaves. Researchers have in the past achieved a lot in the aspect of plant illnesses identification by exploring several techniques and models. However, improvement needs to be provided on account of reviews, new advancements and discussions. Deploying technology can greatly enhance crop production across the globe.  Different approaches and models can be trained with huge data to identify new improved methods for uncovering diseases of plants to tackle problem of low yield. Previous works have determined the robustness of various image processing techniques such as; K-means clustering, Naive Bayes, Feed forward neutral network (FFNN), Support Vector Machine (SVM), K-nearest neighbor (KNN) classifier, Fuzzy logic, Genetic Algorithm (GA), Artificial Neural Network (ANN), Convolutional Neural Network (CNN) etc. This paper provides a critical review and results of different types of approaches and methods used previously to detect and classify various types of plant leaf illnesses using image processing approaches.

References

Mathulaprangsan, S., Lanthong, K., Jetpipattanapong, D., Sateanpattanakul, S., and Patarapuwadol, S. 2020. Rice diseases recognition using effective deep learning models. Joint International Conference on Digital Arts, Media and Technology with ECTI Northern Section Conference on Electrical, Electronics, Computer and Telecommunications Engineering (ECTI DAMT & NCON). 386-389.

Dhinesh, E., and Jagan, A. 2019. Detection of Leaf Disease Using Principal Component Analysis and Linear Support Vector Machine. 11th International Conference on Advanced Computing (ICoAC). 350-355.

Sharma, P., Hans, P., and Gupta, S. C. 2020. Classification of plant leaf diseases using machine learning and image preprocessing techniques. 10th international conference on cloud computing, data science & engineering (Confluence). 480-484.

Militante, S. V., Gerardo, B. D., and Dionisio, N. V. 2019. Plant leaf detection and disease recognition using deep learning. 2019 IEEE Eurasia conference on IOT, communication and engineering (ECICE). 579-582.

Sardogan, M., Tuncer, A., and Ozen, Y. 2018. Plant leaf disease detection and classification based on CNN with LVQ algorithm. 3rd international conference on computer science and engineering (UBMK). 382-385.

Sharath, D. M., Kumar, S. A., Rohan, M. G., and Prathap, C. 2019. Image based plant disease detection in pomegranate plant for bacterial blight. International conference on communication and signal processing (ICCSP). 0645-0649.

Kumar, S. S., and Raghavendra, B. K. 2019. Diseases detection of various plant leaf using image processing techniques: A review. 5th International Conference on Advanced Computing & Communication Systems (ICACCS). 313-316).

Devaraj, A., Rathan, K., Jaahnavi, S., and Indira, K. 2019. Identification of plant disease using image processing technique. International Conference on Communication and Signal Processing (ICCSP). 0749-0753.

Rajasekaran, C., Arul, S., Devi, S., Gowtham, G., and Jeyaram, S. 2020. Turmeric plant diseases detection and classification using artificial intelligence. 2020 International Conference on Communication and Signal Processing (ICCSP). 1335-1339.

Pooja, V., Das, R., and Kanchana, V. 2017. Identification of plant leaf diseases using image processing techniques. 2017 IEEE Technological Innovations in ICT for Agriculture and Rural Development (TIAR). 130-133.

Jasim, M. A., and Al-Tuwaijari, J. M. 2020. Plant leaf diseases detection and classification using image processing and deep learning techniques. 2020 International Conference on Computer Science and Software Engineering (CSASE). 259-265.

Uchida, S., Ide, S., Iwana, B. K., and Zhu, A. 2016. A further step to perfect accuracy by training CNN with larger data. 15th International Conference on Frontiers in Handwriting Recognition (ICFHR). 405-410.

Sabo, B. B., Isah, S. D., Chamo, A. M., and Rabiu, M. A. 2017. Role of smallholder farmers in Nigeria’s food security. Scholarly Journal of Agricultural Science, 7(1): 1-5.

World Bank Data. 2020. Retrieved from https://data.World.bank.org/indicator/SL.AGR.EMPL.ZS?locations=NG. Employment in agriculture (% of total employment) (modelled ILO estimate) – Nigeria.

Oguntegbe, K., Okoruwa, V., Obi-Egbedi, O., and Olagunju, K. 2018. Population growth problems and food security in Nigeria. Available at SSRN 3330999.

Mugithe, P. K., Mudunuri, R. V., Rajasekar, B., and Karthikeyan, S. 2020. Image processing technique for automatic detection of plant diseases and alerting system in agricultural farms. 2020 International Conference on Communication and Signal Processing (ICCSP). 1603-1607.

Sanjana S, Surya Narayan Ganguly, Dhara K N, 2016. A survey on Image Processing Techniques in the field of Agriculture. International journal of engineering research & technology (IJERT) ICIOT- 2016. 4: 29.

Sandhu, G. K., and Kaur, R. 2019. Plant disease detection techniques: a review. 2019 international conference on automation, computational and technology management (ICACTM). 34-38.

Prakash, R. M., Saraswathy, G. P., Ramalakshmi, G., Mangaleswari, K. H., and Kaviya, T. 2017. Detection of leaf diseases and classification using digital image processing. 2017 international conference on innovations in information, embedded and communication systems (ICIIECS). 1-4.

Rashid, M., Ram, B., Batth, R. S., Ahmad, N., Dafallaa, H. M. E. I., and Rehman, M. B. 2019. Novel image processing technique for feature detection of wheat crops using python OpenCV. 2019 International Conference on Computational Intelligence and Knowledge Economy (ICCIKE). 559-563.

Krithika, P., and Veni, S. 2017. Leaf disease detection on cucumber leaves using multiclass support vector machine. 2017 International Conference on Wireless Communications, Signal Processing and Networking (WiSPNET). 1276-1281.

Khirade, S. D., and Patil, A. B. 2015. Plant disease detection using image processing. 2015 International conference on computing communication control and automation. 768-771.

Burhan, S. A., Minhas, S., Tariq, A., and Hassan, M. N. 2020. Comparative study of deep learning algorithms for disease and pest detection in rice crops. 12th International Conference on Electronics, Computers and Artificial Intelligence (ECAI). 1-5.

Hasan, M. J., Mahbub, S., Alom, M. S., and Nasim, M. A. 2019. Rice disease identification and classification by integrating support vector machine with deep convolutional neural network. 1st international conference on advances in science, engineering and robotics technology (ICASERT). 1-6.

Vaishnnave, M. P., Devi, K. S., Srinivasan, P., and Jothi, G. A. P. 2019. Detection and classification of groundnut leaf diseases using KNN classifier. 2019 IEEE International Conference on System, Computation, Automation and Networking (ICSCAN). 1-5.

Padol, P. B., and Yadav, A. A. 2016. SVM classifier based grape leaf disease detection. 2016 Conference on advances in signal processing (CASP). 175-179.

Dandawate, Y., and Kokare, R. 2015. An automated approach for classification of plant diseases towards development of futuristic Decision Support System in Indian perspective. 2015 International conference on advances in computing, communications and informatics (ICACCI). 794-799.

Hari, S. S., Sivakumar, M., Renuga, P., and Suriya, S. 2019. Detection of plant disease by leaf image using convolutional neural network. 2019 International conference on vision towards emerging trends in communication and networking (ViTECoN). 1-5.

Jenifa, A., Ramalakshmi, R., and Ramachandran, V. 2019. Cotton leaf disease classification using deep convolution neural network for sustainable cotton production. 2019 IEEE international conference on clean energy and energy efficient electronics circuit for sustainable development (INCCES). 1-3.

Anand, R., Veni, S., and Aravinth, J. 2016. An application of image processing techniques for detection of diseases on brinjal leaves using k-means clustering method. 2016 international conference on recent trends in information technology (ICRTIT). 1-6.

Durmuş, H., Güneş, E. O., and Kırcı, M. 2017. Disease detection on the leaves of the tomato plants by using deep learning. 2017 6th international conference on agro-geoinformatics. 1-5.

Kaushik, M., Prakash, P., Ajay, R., and Veni, S. 2020. Tomato leaf disease detection using convolutional neural network with data augmentation. In 2020 5th International Conference on Communication and Electronics Systems (ICCES). 1125-1132.

Singh, V., and Misra, A. K. 2017. Detection of plant leaf diseases using image segmentation and soft computing techniques. Information processing in Agriculture. 4(1): 41-49.

Sun, G., Jia, X., and Geng, T. 2018. Plant diseases recognition based on image processing technology. Journal of Electrical and Computer Engineering.

Sridhathan, S., and Kumar, M. S. 2018. Plant infection detection using image processing. International Journal of Modern Engineering Research (IJMER). 8(7).

Supian, M. B. A., Madzin, H., and Albahari, E. 2019. Plant disease detection and classification using image processing techniques: a review. 2nd International Conference on Applied Engineering (ICAE). 1-4.

Reddy, K, Narsimha and Bojja, et al. 2017. Plant Leaf Disease Using Image Processing Techniques. IOSR Journal of Electronics and Communication Engineering. 12: 13-15.

M. Halder, A. Sarkar, H. Bahar. 2019.Plant Disease Detection by Image Processing. SDRP journal of food science and Technology. 3(6).

Ghosal, S., and Sarkar, K. 2020. Rice leaf diseases classification using CNN with transfer learning. IEEE Calcutta Conference (CALCON). 230-236.

Devaraj, A., Rathan, K., Jaahnavi, S., and Indira, K. 2019. Identification of plant disease using image processing technique. International Conference on Communication and Signal Processing (ICCSP). 0749-0753.

Ashwini C, Anusha B, Divyashree B. R., Impana V, Nisarga S. P. 2020. Plant Disease Detection Using Image Processing. International Journal of Engineering Research & Technology (IJERT). 8 (13): 2278-0181.

Suresh V., M. Krishnan, D Gopinath, K Jayanthan. 2020. Plant Disease Detection Using Image Processing. International Journal of Engineering Research & Technology (IJERT).

Liu, J. and Wang, X., 2021. Plant diseases and pests detection based on deep learning: a review. Plant Methods. 17: 1-18.

Iqbal, M.A. and Talukder, K.H. 2020. Detection of potato disease using image segmentation and machine learning. International Conference on Wireless Communications Signal Processing and Networking (WiSPNET). 43-47.

Kowshik B, Savitha V. 2021. Plant Disease Detection Using Deep Learning. International Research Journal on Advanced Science Hub. ICARD. 2021.3(3): 30-33.

Howlader, M.R., Habiba, U., Faisal, R.H. and Rahman, M.M. 2019. Automatic recognition of guava leaf diseases using deep convolution neural network. 2019 international conference on electrical, computer and communication engineering (ECCE). 1-5.

Koay, K.L. 2020. Detection of Plant Leaf Diseases using Image Processing (Doctoral dissertation, Tunku Abdul Rahman University College).

Patil, A.B., Sharma, L., Aochar, N., Gaidhane, R., Sawarkar, V., Fulzele, P. and Mishra, G., 2020. A literature review on detection of plant diseases. European Journal of Molecular & Clinical Medicine. 7(07).

Mohanty, S.P., Hughes, D.P. and Salathé, M., 2016. Using deep learning for image-based plant disease detection. Frontiers in plant science. 7: 1419.

Ranjan, M., Weginwar, M.R., Joshi, N. and Ingole, A.B. 2015. Detection and classification of leaf disease using artificial neural network. International Journal of Technical Research and Applications. 3(3): 331-333.

Ramya, V. and Lydia, M.A. 2016. Leaf disease detection and classification using neural networks. Int. J. Adv. Res. Comput. Commun. Eng, 5(11): 207-210.

Patil, R. and Gulvani, S. 2019. Plant disease detection using neural network: a review. Journal of Emerging Technologies and Innovative Research (JETIR). 6(2): 151-155.

Kinza Amjad, Hamid Ghous. 2021. Critical review on Multi-Crops Leaves Disease Detection using Artificial Intelligence Methods. International Journal of Scientific and Engineering Research. 12(2): 879-912, 2021.

Singh, M.K., Chetia, S. and Singh, M. 2017. Detection and classification of plant leaf diseases in image processing using MATLAB. International journal of life sciences Research. 5(4): 120-124.

Supian, M.B.A., Madzin, H. and Albahari, E. 2019. Plant disease detection and classification using image processing techniques: a review. 2nd International Conference on Applied Engineering (ICAE). 1-4.

Raut, S. and Ingole, K. 2017. Review on leaf disease detection using image processing techniques. International Research Journal of Engineering and Technology (IRJET). 4(04): 2044-2047.

Ramakrishnan, M. 2015. Groundnut leaf disease detection and classification by using back probagation algorithm. In 2015 international conference on communications and signal processing (ICCSP). 0964-0968.

Ngugi, L.C., Abelwahab, M. and Abo-Zahhad, M. 2021. Recent advances in image processing techniques for automated leaf pest and disease recognition–A review. Information processing in agriculture. 8(1): 27-51.

Ishak, S., Rahiman, M.H.F., Kanafiah, S.N.A.M. and Saad, H. 2015. Leaf disease classification using artificial neural network. Jurnal Teknologi. 77(17).

Kanjalkar, H.P. and Lokhande, S.S. 2013. Detection and classification of plant leaf diseases using ANN. International Journal of Scientific & Engineering Research. 4(8): 1777-1780.

Sachdeva, G., Singh, P. and Kaur, P. 2021. Plant leaf disease classification using deep Convolutional neural network with Bayesian learning. Materials Today: Proceedings. 45: 5584-5590.

Kaur, P., Harnal, S., Tiwari, R., Upadhyay, S., Bhatia, S., Mashat, A. and Alabdali, A.M. 2022. Recognition of leaf disease using hybrid convolutional neural network by applying feature reduction. Sensors. 22(2): 575.

Hassan, S.M., Maji, A.K., Jasiński, M., Leonowicz, Z. and Jasińska, E. 2021. Identification of plant-leaf diseases using CNN and transfer-learning approach. Electronics. 10(12): 1388.

Srdjan Sladojevic, Marko Arsenovic, Andras Anderla, Dubravko Culibrk, Darko Stefanovic. 2016. Deep Neural Networks Based Recognition of Plant Diseases by Leaf Image Classification. Computational Intelligence and Neuroscience. 11: 206.

Sandhu, G.K. and Kaur, R. 2019. Plant disease detection techniques: a review. 2019 international conference on automation, computational and technology management (ICACTM). 34-38.

Kiani, Ehsan & Mamedov, Tofik. 2017. Identification of plant disease infection using soft-computing: Application to modern botany. Procedia Computer Science. 120: 893-900.

S. Poonkuntran, M. Kamatchidevi, L. S. Poornima, R. Shreeja. 2018. Plant Disease Identification System. International Research Journal of Engineering and Technology. 5(03): 2245-2250.

Kulkarni, P., Karwande, A., Kolhe, T., Kamble, S., Joshi, A. and Wyawahare, M. 2021. Plant disease detection using image processing and machine learning. arXiv preprint arXiv:2106.10698.

Bashir, S. and Sharma, N. 2012. Remote area plant disease detection using image processing. IOSR Journal of Electronics and Communication Engineering. 2(6): 31-34.

Suganthy, K.B. 2019. Identification of Disease in Leaves using Genetic Algorithm. Journal of Trend in Scientific Research and Development. 3(3).

Chuanlei, Z., Shanwen, Z., Jucheng, Y., Yancui, S. and Jia, C. 2017. Apple leaf disease identification using genetic algorithm and correlation based feature selection method. International Journal of Agricultural and Biological Engineering. 10(2).74-83.

Sivasangari, A., Priya, K. and Indira, K. 2014. Cotton leaf disease detection and recovery using genetic algorithm. International Journal of Engineering Research and General Science.117: 119-123.

Patil, N.S. 2021. Identification of Paddy Leaf Diseases using Evolutionary and Machine Learning Methods. Turkish Journal of Computer and Mathematics Education (TURCOMAT). 12(2): 1672-1686.

Ashokumar S. R, Mohanbabu. G, Rekha S, Raveena Shri G. K. 2019. Detection of Unhealthy Plant Leaves using Genetic Algorithm. Cikitusi Journal for Multidisplinary Research. 6(3): 163-167.

Nagamani H. S, Saroja Devi, J. 2019. Research Methods for Plant Health Detection using Computer Vision Techniques: A Survey. International Journal of Applied Engineering Research. 14(7): 1627-1632.

Hassan, R.J. and Abdulazeez, A.M. 2021. Plant Leaf Disease Detection by Using Different Classification Techniques: Comparative. Asian Journal of Research in Computer Science. 8(4):1-11

Mohanapriya, K. and Balasubramani, M. 2019. October. Recognition of Unhealthy Plant Leaves Using Naive Bayes Classifier. IOP Conference Series: Materials Science and Engineering. 561(1): 012094.

Padao, F.R.F. and Maravillas, E.A. 2015. December. Using Naïve Bayesian method for plant leaf classification based on shape and texture features. International Conference on Humanoid, Nanotechnology, Information Technology, Communication and Control, Environment and Management (HNICEM). 1-5.

Sharma, R., Singh, A., Kavita, Jhanjhi, N.Z., Masud, M., Jaha, E.S. and Verma, S. 2022. Plant disease diagnosis and image classification using deep learning. CMC-Computers Materials & Continua. 71(2): 2125-2140.

D. D Pukale, Gunjan Kokru, Sneha Nadar, Sanskriti Dhar, Shivangi Singh. 2019. A disease Prediction and Rectification System for Banana Plant. Journal of Emerging Technologies and Innovative Research. 6(5): 535-539.

Al Haque, A.F., Hafiz, R., Hakim, M.A. and Islam, G.R. 2019. A computer vision system for guava disease detection and recommend curative solution using deep learning approach. 22nd International Conference on Computer and Information Technology (ICCIT). 1-6.

Singh, A. and Kaur, H. 2021. Potato plant leaves disease detection and classification using machine learning methodologies. IOP Conference Series: Materials Science and Engineering. 1022 (1): 012121.

Elfatimi, E., Eryigit, R. and Elfatimi, L. 2022. Beans leaf diseases classification using mobilenet models. IEEE Access. 10: 9471-9482.

Zhang, X., Qiao, Y., Meng, F., Fan, C. and Zhang, M. 2018. Identification of maize leaf diseases using improved deep convolutional neural networks. Ieee Access. 6:30370-30377.

Zaki, S.N., Ahmed, M., Ahsan, M., Zai, S., Anjum, M.R. and Din, N.U. 2021. Image-based onion disease (purple blotch) detection using deep convolutional neural network. Image (IN). 12(5).

Saleem, M.H., Potgieter, J. and Arif, K.M. 2020. Plant disease classification: A comparative evaluation of convolutional neural networks and deep learning optimizers. Plants. 9(10): 1319.

Fatih, B.A.L. and Kayaalp, F. 2021. Review of machine learning and deep learning models in agriculture. International Advanced Researches and Engineering Journal. 5(2): 309-323.

Wang, Y., Wang, H. and Peng, Z. 2021. Rice diseases detection and classification using attention based neural network and bayesian optimization. Expert Systems with Applications. 178:114770.

Chauhan, M.D. 2021. Detection of maize disease using random forest classification algorithm. Turkish Journal of Computer and Mathematics Education (TURCOMAT). 12(9): 715-720.

Govardhan, M. and Veena, M.B. 2019. Diagnosis of tomato plant diseases using random forest. Global Conference for Advancement in Technology (GCAT). 1-5.

AR, G.G., Kannadasan, R., Alsharif, M.H., Jahid, A. and Khan, M.A. 2021. Categorizing diseases from leaf images using a hybrid learning model. Symmetry. 13(11): 2073.

AR, G.G., Kannadasan, R., Alsharif, M.H., Jahid, A. and Khan, M.A. 2021. Categorizing diseases from leaf images using a hybrid learning model. Symmetry. 13(11): 2073.

Thilagavathi, K., Kavitha, K., Praba, R.D., Arina, S.V. and Sahana, R.C. 2020. Detection of diseases in sugarcane using image processing techniques. Bioscience Biotechnology Research Communications, Special Issue. (11): 109-115.

Thilagavathi, M. and Abirami, S. 2018. Application of Image Processing in Detection of Plant Diseases: A Review. International Journal of Research and Analytical Reviews. 5(1): 403-406.

Simranjeet Kaur, Geetanjali Babbar, Navneet Sandhu, Gagan Jindal. 2019. Various Plant Diseases Detection using Image Processing Methods” International Journal of Scientific Development and Research. 4(6): 428-431.

Durairaj, V. and Surianarayanan, C. 2020. Disease detection in plant leaves using segmentation and autoencoder techniques. Malaya Journal.

Aduwo, J.R., Mwebaze, E. and Quinn, J.A. 2010. Automated Vision-Based Diagnosis of Cassava Mosaic Disease. ICDM (Workshops). 114-122.

Omrani, E., Khoshnevisan, B., Shamshirband, S., Saboohi, H., Anuar, N.B. and Nasir, M.H.N.M. 2014. Potential of radial basis function-based support vector regression for apple disease detection. Measurement. 55: 512-519.

Kaur, S. and Kaur, P. 2015. Review and analysis of various image enhancement techniques. International Journal of Computer Applications Technology and Research. 4(5):414-418.

Srisha, R. and Khan, A.M. 2013. Morphological operations for image processing: understanding and its applications. NCVSComs-13. 13: 17-19.

Gharge, S. and Singh, P.2016. Image processing for soybean disease classification and severity estimation. In Emerging Research in Computing, Information, Communication and Applications: ERCICA. 2: 493-500.

Singh, J. and Kaur, H. 2018, A review on: Various techniques of plant leaf disease detection. 2nd International Conference on Inventive Systems and Control (ICISC). 232-238.

Dey, A.K., Sharma, M. and Meshram, M.R. 2016. Image processing based leaf rot disease, detection of betel vine (Piper BetleL.). Procedia Computer Science. 85: 748-754.

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2023-02-28

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DETECTION AND CLASSIFICATION OF PLANT LEAF DISEASES USING DIGTAL IMAGE PROCESSING METHODS: A REVIEW. (2023). ASEAN Engineering Journal, 13(1), 1-9. https://doi.org/10.11113/aej.v13.17460