The global population’s rapid growth necessitates a 70% increase in agricultural production, posing challenges exacerbated by weed infestation and herbicide drawbacks. To address this, machine learning (ML) models, particularly convolutional neural networks (CNNs), are employed in precision agriculture (PA) for weed detection. This study focuses on testing CNN architectures for image classification tasks using the PyTorch framework, emphasizing hyperparameter optimization. Four groups of experiments were carried out: the first one trained all the PyTorch architectures, followed by the creation of a baseline, the evaluation of a new and extended dataset in the best models, and finally, the test phase was conducted using a web application dev...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
The rapid growth of the world’s population has put significant pressure on agriculture to meet the i...
Now a day, with the increase in world population, the demand for agricultural products is also incre...
The preservation of the environment has become a priority and a subject that is receiving more and m...
Now a day, with the increase in world population, the demand for agricultural products is also incre...
In precision farming, identifying weeds is an essential first step in planning an integrated pest ma...
The accurate identification of weeds is an essential step for a site-specific weed management system...
As the tomato (Solanum lycopersicum L.) is one of the most important crops worldwide, and the conven...
Introduction. Deep learning is a modern technique for image processing and data analysis with promis...
The problem of multiple zones in computer vision, including pattern recognition in the agricultural ...
Traditional means of on-farm weed control mostly relies on manual labor. This process is time consum...
The increasing public concern about food security and the stricter rules applied worldwide concernin...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
The rapid growth of the world’s population has put significant pressure on agriculture to meet the i...
Now a day, with the increase in world population, the demand for agricultural products is also incre...
The preservation of the environment has become a priority and a subject that is receiving more and m...
Now a day, with the increase in world population, the demand for agricultural products is also incre...
In precision farming, identifying weeds is an essential first step in planning an integrated pest ma...
The accurate identification of weeds is an essential step for a site-specific weed management system...
As the tomato (Solanum lycopersicum L.) is one of the most important crops worldwide, and the conven...
Introduction. Deep learning is a modern technique for image processing and data analysis with promis...
The problem of multiple zones in computer vision, including pattern recognition in the agricultural ...
Traditional means of on-farm weed control mostly relies on manual labor. This process is time consum...
The increasing public concern about food security and the stricter rules applied worldwide concernin...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...
Automation, including machine learning technologies, are becoming increasingly crucial in agricultur...