ABSTRACT Plants are an important element of the ecosystem that helps in controlling carbon emissions and environmental changes. Characterization and identification are a need for protecting plants and for people to understand plant protection. Plant leaves are the main parts for detection. Characterizing leaves now has been a significant and complicated task, particularly with the features of leaves. Leaf images of two different types are considered here, one is healthy while the other is unhealthy, and divided into two distinct classes. The proposed method incorporates features of the leaf images that are extracted utilizing the Gray Level Co-occurrence Matrix (GLCM) and Gray Level Run Length Matrix (GLRLM) feature extraction techniques. The outcomes are classified using three different classifiers: Random Forest, Multilayer Perceptron, and Naïve Bayes with an accuracy of 95.84%, 98.33%, and 82.89% respectively. The classifiers successfully classify the healthy and diseased leaves of various plants that were considered here. Hence as per the investigation, the study can be valuable for analysts for plant recognition, characterization, and diagnosis.
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