Over the last few years, the impact of climate change has increased rapidly. It is influencing all steps of plant production and forcing farmers to change and adapt their crop management practices using new technologies based on data analytics. This study aims to classify plant diseases based on images collected directly in the field using deep learning. To this end, an ensemble learning paradigm is investigated to build a robust network in order to predict four different pear leaf diseases. Several convolutional neural network architectures, named EfficientNetB0, InceptionV3, MobileNetV2 and VGG19, were compared and ensembled to improve the predictive performance by adopting the bagging strategy and weighted averaging. Quantitative experim...
Crop disease diagnosis is of great significance to crop yield and agricultural production. Deep lear...
In recent times, the use of artificial intelligence (AI) in agriculture has become the most importan...
With recent advancements in the classification methods of various domains, deep learning has shown r...
Early diagnosis of leaf diseases is a fundamental tool in precision agriculture, thanks to its high ...
Crop disease identification is crucial for avoiding production losses and lowering the amount of agr...
In the modern era, deep learning techniques have emerged as powerful tools in image recognition. Con...
Early diagnosis of plant diseases is of vital importance since they cause social, ecological, and ec...
The automatic detection of diseases in plants is necessary, as it reduces the tedious work of monito...
Plant disease classification is the use of machine learning techniques for determining the type of d...
Plant diseases cause great damage in agriculture, resulting in significant yield losses. The recent ...
Plant diseases and pests cause significant losses in agriculture, with economic, ecological and soci...
The plant disease prediction is useful in increasing agricultural production. The plant disease diag...
Diseases that affect plant leaves stop the growth of their individual species. Early and accurate di...
Deep learning is a cutting-edge image processing method that is still relatively new but produces re...
Pest infestations have an impact on the nation's agricultural output when they harm plants and crops...
Crop disease diagnosis is of great significance to crop yield and agricultural production. Deep lear...
In recent times, the use of artificial intelligence (AI) in agriculture has become the most importan...
With recent advancements in the classification methods of various domains, deep learning has shown r...
Early diagnosis of leaf diseases is a fundamental tool in precision agriculture, thanks to its high ...
Crop disease identification is crucial for avoiding production losses and lowering the amount of agr...
In the modern era, deep learning techniques have emerged as powerful tools in image recognition. Con...
Early diagnosis of plant diseases is of vital importance since they cause social, ecological, and ec...
The automatic detection of diseases in plants is necessary, as it reduces the tedious work of monito...
Plant disease classification is the use of machine learning techniques for determining the type of d...
Plant diseases cause great damage in agriculture, resulting in significant yield losses. The recent ...
Plant diseases and pests cause significant losses in agriculture, with economic, ecological and soci...
The plant disease prediction is useful in increasing agricultural production. The plant disease diag...
Diseases that affect plant leaves stop the growth of their individual species. Early and accurate di...
Deep learning is a cutting-edge image processing method that is still relatively new but produces re...
Pest infestations have an impact on the nation's agricultural output when they harm plants and crops...
Crop disease diagnosis is of great significance to crop yield and agricultural production. Deep lear...
In recent times, the use of artificial intelligence (AI) in agriculture has become the most importan...
With recent advancements in the classification methods of various domains, deep learning has shown r...