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DOI10.47974/JIOS-1548
The integration of machine learning and IoT for the early detection of tomato leaf disease in real-time
发表日期2024
ISSN0252-2667
EISSN2169-0103
起始页码45
结束页码2
卷号45期号:2
英文摘要The impact of climate change, pests, and inadequate agricultural practices on crop health is becoming a growing concern. It is estimated that 20-40% of global crop yield is adversely affected by pests and diseases. This has a direct negative impact on food security and nutritional well-being, as staple cereal crops (such as rice, maize, and wheat) and tuber crops (like potato, onion, and tomato) are affected. Advancements in Artificial Intelligence (AI), Computer Vision (CV), and IoT have a significant influence on reducing crop losses by detecting crop diseases at early stages. The primary focus of this research is to develop a realtime system that can detect tomato crop diseases at an early stage by integrating Machine Learning (ML) algorithms and IoT. The most common tomato leaf diseases, such as Tomato Mosaic Virus (TMV), Tomato Bacterial Leaf Spot (TBLS), Tomato Early Blight (TEB), and Tomato Late Blight (TLB), are considered in this work. The hybrid discriminative feature space is derived from the integration of low- and high-level features via Convolution Neural Network (CNN) Layers. The 3-stage Stacked Deep Convolutional Autoencoder is used to optimize the CNN performance by reducing computation complexity. The proposed model is implemented on the Plantvillage benchmark dataset and achieves the highest recognition accuracy of 95.6% for the 5-class problem using 5-fold cross-validation.
英文关键词Convolutional neural network (CNN); Stacked deep convolutional autoencoder (SDCA); Optimization in CNN model; Low; and high-level features; Plantvillage dataset
语种英语
WOS研究方向Information Science & Library Science
WOS类目Information Science & Library Science
WOS记录号WOS:001202153600009
来源期刊JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/296642
作者单位Vidyavardhaka College of Engineering; Graphic Era University; NITTE (Deemed to be University); NMAM Institute of Technology
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. The integration of machine learning and IoT for the early detection of tomato leaf disease in real-time[J],2024,45(2).
APA (2024).The integration of machine learning and IoT for the early detection of tomato leaf disease in real-time.JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES,45(2).
MLA "The integration of machine learning and IoT for the early detection of tomato leaf disease in real-time".JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES 45.2(2024).
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