4.6 Article

Detection of Apple Plant Diseases Using Leaf Images Through Convolutional Neural Network

Journal

IEEE ACCESS
Volume 11, Issue -, Pages 6594-6609

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3232917

Keywords

Apple diseases; classification; convolutional neural network; deep learning; disease detection; image processing; machine learning

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Plant diseases are a major cause of crop losses globally, and their detection is challenging due to the lack of expert knowledge. Deep learning-based models show promise in identifying plant diseases using leaf images, but issues like the need for larger training sets and computational complexity still need to be addressed.
Plant diseases are a severe cause of crop losses in the agriculture globally. Detection of diseases in plants is difficult and challenging due to the lack of expert knowledge. Deep learning-based models provide promising ways to identify plant diseases using leaf images. However, need of larger training sets, computational complexity, and overfitting, etc. are the major issues with these techniques that still need to be addressed. In this work, a convolutional neural network (CNN) is developed that consists of smaller number of layers leading to lower computational burden. Some augmentation techniques such as shift, shear, scaling, zoom, and flipping are applied to generate additional samples increasing the training set without actually capturing more images. The CNN model is trained for apple crop using a publicly available dataset PlantVillage to identify Scab, Black rot, and Cedar rust diseases in apple leaves. The rigorous experimental results revealed that the proposed model is well fit to identify apple leaf diseases and achieves 98% classification accuracy. It is also evident from the results that it needs lesser amount of storage and takes smaller execution time than several existing deep CNN models. Although, there exist several CNN models for crop disease detection with comparable accuracy, but the proposed model needs lower storage and computational resources. Therefore, it is highly suitable for deploying in handheld devices.

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