CNN is one of the representative algorithms of deep learning. With the development of theory and the improvement of numerical computing equipment, CNN has developed rapidly. A variety of models have been derived and applied to different places. Taking the classification of vegetables and fruits as the data reference, this paper studies three CNN models: AlexNet, VGG and NIN. Our purpose is to analyze which model is most suitable for this image classification task and compare the advantages and disadvantages of the three models. By adjusting different hyper parameters; relative learning rate (Lr), epochs(#epochs) and batch size(batch _size) on the training loss, train accuracy and test accuracy among three models. The VGGNet with Lr = 0.0000...
In recent years, the machine learning technology has drawn more interest in a variety of vision task...
In recent years, deep learning has provided the breakthrough of many new practical applications of m...
Plant disease is a challenge in the agricultural sector, especially for rice production. Identifying...
The aim of the research is to compare traditional and deep learning methods in image classification ...
Convolutional Neural Networks (CNNs) have been widely applied in image classification tasks. CNNs ha...
INST: L_042The usage of CNN was investigated on a classification task conducted on a small dataset o...
Fruit recognition is useful for automatic fruit harvesting. Fruit recognition application can reduce...
The image classification is a classical problem of image processing, computer vision, and machine le...
Image recognition and -classification is becoming more important as the need to be able to process l...
Description The purpose of this project is to build a deep learning nerual network that can accurat...
There are various ways a user can go about selecting a Convolutional Neural Net- work model for the...
According to some estimates of World Health Organization, in 2014, more than 1.9 billion adults were...
The aim of this thesis is to study problems of deep convolutional neural networks and the connected ...
In this work, we will use a convolutional neural network to classify images. In the field of visual ...
The use of machine learning and computer vision methods for recognizing different plants from images...
In recent years, the machine learning technology has drawn more interest in a variety of vision task...
In recent years, deep learning has provided the breakthrough of many new practical applications of m...
Plant disease is a challenge in the agricultural sector, especially for rice production. Identifying...
The aim of the research is to compare traditional and deep learning methods in image classification ...
Convolutional Neural Networks (CNNs) have been widely applied in image classification tasks. CNNs ha...
INST: L_042The usage of CNN was investigated on a classification task conducted on a small dataset o...
Fruit recognition is useful for automatic fruit harvesting. Fruit recognition application can reduce...
The image classification is a classical problem of image processing, computer vision, and machine le...
Image recognition and -classification is becoming more important as the need to be able to process l...
Description The purpose of this project is to build a deep learning nerual network that can accurat...
There are various ways a user can go about selecting a Convolutional Neural Net- work model for the...
According to some estimates of World Health Organization, in 2014, more than 1.9 billion adults were...
The aim of this thesis is to study problems of deep convolutional neural networks and the connected ...
In this work, we will use a convolutional neural network to classify images. In the field of visual ...
The use of machine learning and computer vision methods for recognizing different plants from images...
In recent years, the machine learning technology has drawn more interest in a variety of vision task...
In recent years, deep learning has provided the breakthrough of many new practical applications of m...
Plant disease is a challenge in the agricultural sector, especially for rice production. Identifying...