Plant disease recognition and classification has been an active area of research based on computer vision techniques. Herb disease detection has been lacking due to a large amount of study focusing on plant diseases as herbs are also part of the plant family and very much prone to diseases. A parsley leaf disease detection and classification model has been developed to diagnose and differentiate parsley leaf spot (PLS) disease according to the disease severity. The proposed model is a convolutional neural network (CNN) based deep learning (DL) model to classify 2000 real-phase images dataset of parsley leaf containing healthy and PLS infected images, resulting in 99.5% classification accuracy in case of both binary and multi-classification of the PLS disease. In addition to this, the proposed model has also been compared with state-of-the-art pre-trained models which show the out-performance of the proposed model in terms of multi-classification of PLS disease.
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