枯萎病
计算机科学
疾病
植物病害
人工智能
医学
生物技术
生物
植物
病理
作者
S. Oudaya Coumar,Z. Mani Rathnam,Keshavamurthy Vinay,G. Sai Bhargav
标识
DOI:10.1109/ic-etite58242.2024.10493839
摘要
Tomato plant which is scientifically called as Solanum lycopersicum, they are very important in global agriculture as food source. However, they are much known to blight diseases that they can severely impact on crop yields. These blight diseases are two types namely Early blight and Late blight. The accurate identification of blight disease is necessary for effective disease management and ensuring food security through the integration of machine learning. This paper presents an IoT system that incorporates several sensors to monitor environmental parameters, including accuracy and validation in real-time. These datasets are used to create a responsive and dynamic monitoring network for tomato plants. The high-resolution images of tomato leaves are captured by using enabled cameras. By taking help of Machine learning techniques like convolution neural networks (CNNs) and deep learning we can able to analyze the leaf images and identify early and late blight symptoms. The machine learning model provides the remarkable accuracy in between healthy leaves and those affected by blight and also categorize the level of the disease.
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