This work provides an extensive review of corn leaves disease prediction. Plant diseases are considered a significant threat to economic loss and production in worldwide agriculture. The monitoring and prediction of conditions play a substantial role in agricultural-based disease prediction. The disease over the plants shows a significant negative impact on crop cultivation. Thus, an automated system is essential for predicting crop diseases, aiming to help the farmers predict disease over the corn leaves. The target of the automated system is to predict the spread of the disease and damages in the plants. The advancements in Artificial Intelligence (AI) pave the way for modern technological improvements for analyzing these conditions in a ...
Improving yield and maintaining crop strength with optimization in use of resources are the major re...
This investigation is to assist pursuer with understanding identification and expectation of leaf ma...
Deep Learning is still an interesting issue and is still widely studied. In this study Deep Learning...
Corn is a mass-produced agricultural product that plays a major role in the food chain and many agri...
Abstract: The occurrence of diseases in plants badly impacts the agricultural production, which incr...
The increasing gap between the demand and productivity of maize crop is a point of concern for the f...
The plant disease prediction is useful in increasing agricultural production. The plant disease diag...
Accurate diagnosis of corn crop diseases is a complex challenge faced by farmers during the growth a...
The proposed project aims to develop a model that uses machine learning algorithms and the Yolov7 to...
An optimized dense convolutional neural network (CNN) architecture (DenseNet) for corn leaf disease ...
Deep learning is currently playing an important role in image analysis and classification. Diseases ...
In agriculture production, the unlimited and no disease plant product from farming become important ...
Indonesia is an agricultural country with abundant agricultural products. One of the crops used as a...
Deep Learning is still an interesting issue and is still widely studied. In this study Deep Learning...
A quick and precise crop leaf disease detection is important to increasing agricultural yield in a s...
Improving yield and maintaining crop strength with optimization in use of resources are the major re...
This investigation is to assist pursuer with understanding identification and expectation of leaf ma...
Deep Learning is still an interesting issue and is still widely studied. In this study Deep Learning...
Corn is a mass-produced agricultural product that plays a major role in the food chain and many agri...
Abstract: The occurrence of diseases in plants badly impacts the agricultural production, which incr...
The increasing gap between the demand and productivity of maize crop is a point of concern for the f...
The plant disease prediction is useful in increasing agricultural production. The plant disease diag...
Accurate diagnosis of corn crop diseases is a complex challenge faced by farmers during the growth a...
The proposed project aims to develop a model that uses machine learning algorithms and the Yolov7 to...
An optimized dense convolutional neural network (CNN) architecture (DenseNet) for corn leaf disease ...
Deep learning is currently playing an important role in image analysis and classification. Diseases ...
In agriculture production, the unlimited and no disease plant product from farming become important ...
Indonesia is an agricultural country with abundant agricultural products. One of the crops used as a...
Deep Learning is still an interesting issue and is still widely studied. In this study Deep Learning...
A quick and precise crop leaf disease detection is important to increasing agricultural yield in a s...
Improving yield and maintaining crop strength with optimization in use of resources are the major re...
This investigation is to assist pursuer with understanding identification and expectation of leaf ma...
Deep Learning is still an interesting issue and is still widely studied. In this study Deep Learning...