A Review of AI Methods for Diagnosing Plant and Crop Diseases
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Keywords

Disease detection
Machine Learning
Deep Learning
Naïve Bayes
KNN
CNN
RNN

How to Cite

N., Shanmugapriya, Thalluru Harika, Mannem Vijitha Reddy, Manchikalapati Subrahmanyam, and Kolapalli Jaswanth Teja. 2024. “A Review of AI Methods for Diagnosing Plant and Crop Diseases”. Journal of Trends in Computer Science and Smart Technology 6 (4): 391-403. https://doi.org/10.36548/jtcsst.2024.4.005.

Abstract

Plant diseases, caused by infectious organisms and unfavorable environmental conditions, pose a significant threat to agriculture. These diseases lead to notable decreases in crop yields, resulting in substantial economic losses. It is essential to address these challenges and safeguard the food supply and sustain effective farming practices. Though the detection of diseases in plants and crops through the traditional methods has always been a very difficult task to deal with the emergence of the AI (artificial intelligence) technologies has enhanced the efficiency and the accuracy of the diagnosis. This study presents a brief overview of the various machine and deep learning methods used for disease recognition in plants and compares the performance of the machine learning and deep learning algorithms in the detection of diseases in plants. The comparative study demonstrates that the deep learning methods achieve higher accuracy and better performance on complex tasks related to machine learning at the cost of increased computational resources and training time.

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References

Balafas, Vasileios, Emmanouil Karantoumanis, Malamati Louta, and Nikolaos Ploskas. "Machine learning and deep learning for plant disease classification and detection." IEEE Access (2023).VOLUME 11, 2023 114352-114377.

Khakimov, Albert, Ilias Salakhutdinov, Almas Omolikov, and Samad Utaganov. "Traditional and current-prospective methods of agricultural plant diseases detection: A review." In IOP Conference series: earth and environmental science, vol. 951, no. 1, IOP Publishing, 2022. 012002.

S. S. Sannakki and V. S. Rajpurohit, "Classification of Pomegranate Diseases Based on Back Propagation Neural Network", International Research Journal of Engineering and Technology (IRJET), vol. 2, no. 02.

Harakannanavar, Sunil S., Jayashri M. Rudagi, Veena I. Puranikmath, Ayesha Siddiqua, and R. Pramodhini. "Plant leaf disease detection using computer vision and machine learning algorithms." Global Transitions Proceedings 3, no. 1 (2022): 305-310.

Ahmed, Imtiaz, and Pramod Kumar Yadav. "Plant disease detection using machine learning approaches." Expert Systems 40, no. 5 (2023): e13136.

Sharada P. Mohanty, P. Hughes David and Marcel Salathe, "Using deep learning for image-based plant disease detection", Frontiers in plant science, vol. 7, 1419, 2016.

Caglayan, Ali, Oguzhan Guclu, and Ahmet Burak Can. "A plant recognition approach using shape and color features in leaf images." In Image Analysis and Processing–ICIAP 2013: 17th International Conference, Naples, Italy, September 9-13, 2013, Proceedings, Part II 17, Springer Berlin Heidelberg, 2013. 161-170.

Chohan, Murk, Adil Khan, Rozina Chohan, Saif Hassan Katpar, and Muhammad Saleem Mahar. "Plant disease detection using deep learning." International Journal of Recent Technology and Engineering 9, no. 1 (2020): 909-914.

Shrestha, Garima, Majolica Das, and Naiwrita Dey. "Plant disease detection using CNN." In 2020 IEEE Applied Signal Processing Conference (ASPCON), IEEE, 2020. 109-113.

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), IEEE, 2019. 1-6.

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

Mohanapriya, K., and M. Balasubramani. "Recognition of unhealthy plant leaves using Naive Bayes classifier." In IOP Conference Series: Materials Science and Engineering, vol. 561, no. 1, IOP Publishing, 2019. 012094.

Resti, Yulia, Chandra Irsan, Mega Tiara Putri, Irsyadi Yani, Ansyori Ansyori, and Bambang Suprihatin. "Identification of corn plant diseases and pests based on digital images using multinomial naïve bayes and k-nearest neighbor." Science and Technology Indonesia 7, no. 1 (2022): 29-35.

Gnanasaravanan, S., B. Tharani, and Mona Sahu. "Long Short-Term Memory Recurrent Neural Networks for Plant disease Identification." Plant pathology 3, no. 2 (2021).

Sivalingam, Vidya, Rawia Elarabi, J. Bhargavi, M. Sahaya Sheela, R. Padmapriya, and A. N. Arularasan. "A novel approach for plant leaf disease predictions using recurrent neural network RNN classification method." Journal of Advanced Research in Applied Sciences and Engineering Technology 31, no. 2 (2023): 327-338.

https://www.analyticsvidhya.com/articles/machine-learning-vs-artificial-intelligence-vs-deep-learning/#h-what-is-artificial-intelligence

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