MACHINE LEARNING AND DEEP LEARNING: A COMPARATIVE ANALYSIS FOR APPLE LEAF DISEASE DETECTION

Authors:

Anupam Bonkra,Sunil Pathak,Amandeep Kaur,

DOI NO:

https://doi.org/10.26782/jmcms.2025.02.00002

Keywords:

Classification,Deep Learning,Apple,Rust Leaf,Disease,Machine Learning,Scab,Spot,

Abstract

Variations in the visual characteristics of leaf diameters allow for the differentiation of ill states, making leaves valuable indicators for the diagnosis of sickness. Accurate disease diagnosis depends on identifying the distinctive patterns that illnesses leave on foliage. Specialists or cultivators have frequently performed plant inspections, which may be costly and time-consuming. Automation of disease diagnosis is therefore crucial, particularly in areas with limited access to specialists. This work employs five classification algorithms Inception V3, Decision Tree, Support Vector Machine (SVM), and Random Forest to create a model for detecting diseases on apple leaves. The study's prime focus is Apple Rust, Apple Spot, and Apple Scab. To detect these illnesses, a relative examination of machine learning and deep learning models is carried out using the "Apple Leaves Disease Dataset."Among all the models tested, VGG19 achieved the highest test accuracy, reaching an impressive 95 percent.

Refference:

I. Abdullah, Dakhaz Mustafa, and Adnan Mohsin Abdulazeez. “Machine learning applications based on SVM classification a review.” Qubahan Academic Journal 1.2 (2021): 81-90. 10.48161/QAJ.V1N2A50
II. Barhate, Deepti, Sunil Pathak, and Ashutosh Kumar Dubey. “Hyperparameter-tuned batch-updated stochastic gradient descent: Plant species identification by using hybrid deep learning.” Ecological Informatics 75 (2023): 102094. 10.1016/j.ecoinf.2023.102094
III. Bednarz, Craig W., W. Don Shurley, and W. Stanley Anthony. “Losses in yield, quality, and profitability of cotton from improper harvest timing.” Agronomy Journal 94.5 (2002): 1004-1011. 10.2134/agronj2002.1004
IV. Bonkra, Anupam, et al. “A systematic study: implication of deep learning in plant disease detection.” 2022 IEEE international conference on current development in engineering and technology (CCET). IEEE, 2022. 10.1109/CCET56606.2022.10080181
V. Bonkra, Anupam, Ajit Noonia, and Amandeep Kaur. “Apple leaf diseases detection system: a review of the different segmentation and deep learning methods.” International Conference on Artificial Intelligence and Data Science. Cham: Springer Nature Switzerland, 2021. 10.1007/978-3-031-21385-4_23
VI. Bonkra, Anupam, et al. “Apple leave disease detection using collaborative ml/dl and artificial intelligence methods: Scientometric analysis.” International journal of environmental research and public health 20.4 (2023): 3222. 10.3390/ijerph20043222
VII. Di Franco, Giovanni, and Michele Santurro. “Machine learning, artificial neural networks and social research.” Quality & quantity 55.3 (2021): 1007-1025. 10.1007/s11135-020-01037-y
VIII. Gené-Mola, Jordi, et al. “Multi-modal deep learning for Fuji apple detection using RGB-D cameras and their radiometric capabilities.” Computers and Electronics in Agriculture 162 (2019): 689-698. doi: 10.1016/j.compag.2019.05.016
IX. Kaur, Prabhjot, et al. “Performance analysis of segmentation models to detect leaf diseases in tomato plant.” Multimedia Tools and Applications 83.6 (2024): 16019-16043. 10.1007/s11042-023-16238-4
X. Kaur, Prabhjot, et al. “A novel transfer deep learning method for detection and classification of plant leaf disease.” Journal of Ambient Intelligence and Humanized Computing 14.9 (2023): 12407-12424. 10.1007/s12652-022-04331-9
XI. Khirade, Sachin D., and Amit B. Patil. “Plant disease detection using image processing.” 2015 International conference on computing communication control and automation. IEEE, 2015. 10.1109/ICCUBEA.2015.153
XII. Li, Huishan, et al. “Real-Time Detection of Apple Leaf Diseases in Natural Scenes Based on YOLOv5.” Agriculture 13.4 (2023): 878. 10.3390/agriculture13040878
XIII. Li, Lili, et al. “Diagnosis and mobile application of apple leaf disease degree based on a small-sample dataset.” Plants 12.4 (2023): 786. 10.3390/plants12040786
XIV. Li, Lili, Shujuan Zhang, and Bin Wang. “Apple leaf disease identification with a small and imbalanced dataset based on lightweight convolutional networks.” Sensors 22.1 (2021): 173. 10.3390/s22010173
XV. Liu, Sha, et al. “An improved lightweight network for real-time detection of apple leaf diseases in natural scenes.” Agronomy 12.10 (2022): 2363.doi: 10.3390/agronomy12102363
XVI. Perveen, Kahkashan, et al. “[Retracted] Multidimensional Attention‐Based CNN Model for Identifying Apple Leaf Disease.” Journal of Food Quality 2023.1 (2023): 9504186. 10.1155/2023/9504186
XVII. Rao, Anusha, and S. B. Kulkarni. “RETRACTED: A Hybrid Approach for Plant Leaf Disease Detection and Classification Using Digital Image Processing Methods.” International Journal of Electrical Engineering & Education 60.1_suppl (2023): 3428-3446. 10.1177/0020720920953126
XVIII. Rohini, V., and R. Jyothsna. “Disease detection in apple tree leaves using CNN algorithms.” Journal of Survey in Fisheries Sciences 10.4S (2023): 1097-1101. 10.17762/sfs.v10i4S.1158
XIX. Sabzi, Sajad, et al. “Segmentation of apples in aerial images under sixteen different lighting conditions using color and texture for optimal irrigation.” Water 10.11 (2018): 1634. 10.3390/w10111634
XX. Sai, A. M., & Patil, N. (2022, October). Sai, Andhavaram Mohan, and Nagamma Patil. “Comparative Analysis of Machine Learning Algorithms for Disease Detection in Apple Leaves.” 2022 International Conference on Distributed Computing, VLSI, Electrical Circuits and Robotics (DISCOVER). IEEE, 2022. 10.1109/DISCOVER55800.2022.9974840
XXI. Sangeetha, K., et al. “Apple leaf disease detection using deep learning.” 2022 6th International Conference on Computing Methodologies and Communication (ICCMC). IEEE, 2022. doi: 10.1109/ICCMC53470.2022.9753985
XXII. Sharma, Ochin, et al. “Predicting Agriculture Leaf Diseases (Potato): An Automated Approach using Hyper-parameter Tuning and Deep Learning.” 2023 Third International Conference on Secure Cyber Computing and Communication (ICSCCC). IEEE, 2023. 10.1109/ICSCCC58608.2023.10176819
XXIII. Sivakamasundari, G., and V. Seenivasagam. “Classification of leaf diseases in apple using support vector machine.” International Journal of Advanced Research in Computer Science 9.1 (2018): 261-265. 10.26483/ijarcs.v9i1.5124
XXIV. Sheikh, Sophiya, Manmohan Sharma, and Amar Singh, eds. “Recent Advances in Computing Sciences: Proceedings of RACS 2022.” (2023). 10.1201/9781003405573
XXV. Sood, Shivani, and Harjeet Singh. “A comparative study of grape crop disease classification using various transfer learning techniques.” Multimedia Tools and Applications 83.2 (2024): 4359-4382. 10.1007/s11042-023-14808-0
XXVI. Tian, Liangliang, et al. “VMF-SSD: A Novel v-space based multi-scale feature fusion SSD for apple leaf disease detection.” IEEE/ACM Transactions on Computational Biology and Bioinformatics 20.3 (2022): 2016-2028. 10.1109/TCBB.2022.3229114
XXVII. Vishnoi, Vibhor Kumar, et al. “Detection of apple plant diseases using leaf images through convolutional neural network.” IEEE Access 11 (2022): 6594-6609. 10.1109/ACCESS.2022.3232917
XXVIII. Zhu, Ruilin, et al. “Apple-Net: A model based on improved YOLOv5 to detect the apple leaf diseases.” Plants 12.1 (2022): 169. 10.3390/plants12010169

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