@article{article_1635917, title={A Transfer Learning-Based Efficient Model for the Detection of Plant Leaf Diseases}, journal={Journal of Agricultural Sciences}, volume={31}, pages={981–997}, year={2025}, DOI={10.15832/ankutbd.1635917}, author={Zainab, Zunaira and Mahum, Rabbia and Nasr, Emad Abouel and Shehab, Mohammad and Hassan, Haseeb and El-meligy, Mohammed}, keywords={Transfer Learning, CNN, Plant Disease, Agriculture}, abstract={Plant disease control is necessary in agriculture since it can result in considerable crop yield losses. To reduce damage, quick diagnosis and categorization of plant leaf diseases is required; unfortunately, this process takes a lot of time and needs human efforts. To deal with these issues, a novel computerized approach for fast observation and categorization is required. There exist methodologies based on Deep Learning (DL) techniques that make use of an easily accessible dataset, namely The Plant Village Dataset. However, they may fail to recognize the diseases on unseen data due to less diverse feature extraction. Therefore, this research proposed a plant disease detector based on Deep Learning model using images of leaves and can identify several plant diseases. First, we perform image preprocessing operations. Second, Convolutional Neural Network (CNN) having several convolution and pooling layers is employed and the results are evaluated with existing DL models with varying hyper-parameters. After training, the model is carefully evaluated to validate the findings. We conducted several trials using the proposed model and attained testing accuracy of 97.6%}, number={4}, publisher={Ankara University}