Enhancing Smart Agriculture Applications Utilizing Deep Learning Models and Computer Vision Techniques

Enhancing Smart Agriculture Applications Utilizing Deep Learning Models and Computer Vision Techniques

K. Srujan Raju, K. Suneetha, K. Reddy Madhavi, Kondra Pranitha, J. Avanija, B. Narendra Kumar Rao
DOI: 10.4018/979-8-3693-2069-3.ch012
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Abstract

The integration of deep learning models and computer vision techniques has created new agricultural possibilities, transforming traditional farming practices into smart and efficient operations. These advanced technologies have enabled farmers to optimise resource utilisation, manage crops effectively, maximise yields, and make informed decisions, resulting in increased crop productivity. One of the main applications of deep learning models is the usage of convolutional neural networks (CNNs) for detecting plant disease. By training on a large dataset containing images of healthy and diseased plants, these models can identify and prevent the spread of diseases among crops, significantly reducing losses. The transfer learning approach involves adapting pre-trained models to agricultural datasets, and improves disease identification capabilities by applying knowledge gained from general image datasets. Deep learning-based models combined with computer vision techniques play a significant role in monitoring crop growth and estimating yields.
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2. Deep Learning Models And Computer Vision Techniques

The integration of these two techniques has become prevalent in plant disease detection, crop monitoring, and yield estimation within the agricultural domain. “Convolutional Neural Networks (CNNs) models are utilized to classify and diagnose various plant diseases” (Ishan Mehtha et al., 2023). Transfer learning, a method utilizing pre-trained models fine-tuned on agricultural datasets, has proven effective in utilizing knowledge gained from general image datasets to tackle specific plant disease identification tasks. Computer vision algorithms can identify visual symptoms of diseases such as leaf discoloration, lesions, or abnormal growth patterns. By analyzing images captured by drones, cameras, or smartphones, these techniques can provide accurate disease detection (Khang & Santosh et al., 2023).

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