Affiliation:
1. NBN Sinhgad School of Engineering, Pune, Maharashtra, India
Abstract
Agricultural products are the most basic requirement of every country. Infected plants have a negative influence on the country's agricultural production and economic resources. Early disease detection is critical in agriculture for a high crop yield. After recognizing the symptoms of leaf diseases, automatic methods for classification of plant diseases can also assist in taking action. Plant disease detection is critical in the agricultural sector because it affects the plant's robustness and health, both of which are important factors in agricultural productivity. These issues are prevalent in plants, and if suitable preventative measures are not implemented, the culture may be severely harmed. In the actual world, the existing approach of detecting disease relies on an expert's opinion and physical analysis, which is time-consuming and costly. We're introducing automatic plant leaf disease detection and classification based on artificial intelligence for rapid and easy disease diagnosis and classification. This main aim of our system is towards increasing the productivity of crops in agriculture. We followed numerous phases in this approach, including image collecting, image pre-processing, segmentation, and classification.