作者
Anveshini Dumala, Anusha Papasani, Rajeswari Bommala, Vikkurty Sireesha
发表日期
2022/5/9
研讨会论文
2022 International Conference on Applied Artificial Intelligence and Computing (ICAAIC)
页码范围
1185-1192
出版商
IEEE, indexed in Scopus
简介
Detection of plant disease at an early stage increases the crop yield otherwise these diseases may negatively impact the agro market economy. The conventional methods were time consuming and practically infeasible to cover thousands acres of farming areas to detect leaf diseases. A methodology is proposed in this paper, to spot and to analyze the plant leaf diseases using digital image processing techniques through a supervised machine learning technique called multi-support vector machine (m-SVM) algorithm. SVM handles both semi structured and unstructured data. The proposed model recognizes and classifies the images of the leaves that were captured by digital camera or a mobile phone or drones or web camera. A novel way of training and methodology was used to accelerate the speedy, easy and simple implementation of the system in real-time. The experimental outcomes make evident that the …
引用总数
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A Dumala, A Papasani, R Bommala, V Sireesha - 2022 International Conference on Applied Artificial …, 2022