Detection of Plant Disease and Pests using Coherent Deep Learning Algorithms
Pratibha Nayar, Shivank Chhibber, Ashwani Kumar Dubey
Abstract
Recently, the use of artificial intelligence (AI) in agriculture has become the most important due to its applicability in a non-exhaustive sector of the economy. The creative approach to the introduction of agricultural technology is highly increased today. Advances in computer vision and artificial intelligence (AI) have enabled fast and efficient pest recognition algorithms. Control of diseased leaves in the cropping stage is an important step. Detecting disease at an early stage and analysing affected leaves is always beneficial for agricultural development. Similarly, pest diseases hit down the development and production of Agri based resources, so their accurate recognition is required to use pesticides and eradicate the pests. In this study we provide a transfer learning-based explanation for detecting multiple diseases in different plant selections using images of healthy and diseased plants, derived from Plant Doc dataset. This paper shows a comparative study of various YOLO versions on the PlantDoc and Our own curated Plant Disease and Pest Detection Models based on YOLO versions v7 and v8 and the ability to perform detection much faster and with higher precision than the existing models developed previously.