Cloud type classification is a complex multi-class problem where total sky images are analysed to determine their category such as Stratus or Cirrus, among others. However, many properties of this domain make high classification accuracy difficult to achieve. In this paper, we design a novel fusion approach, showing that recent image classification architectures based on deep learning, such as Convolutional Neural Networks, can be improved using statistical features directly calculated from images. In this research, three powerful CNNs have been trained on a comprehensive dataset: VGG-19, Inception-ResNet V2 and Inception V3. Simultaneously, a pool of standard machine learning classifiers have been trained on 14 different statistical charac...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
Detecting changes in land use and land cover (LULC) from space has long been the main goal of satell...
Abstract Most existing methods only utilize the visual sensors for ground-based cloud classification...
The aim of this thesis is to analyze the performance of Convolutional Neural Networks (CNN) in the ...
Information about clouds is important for observing and predicting weather and climate as well as fo...
Clouds are one of the most important moderators of the earth radiation budget and one of the least u...
The greatest source of uncertainty in model estimates of projected climate change involve clouds and...
Cloud classification of ground-based images is a challenging task. Recent research has focused on ex...
Compared with satellite remote sensing images, ground-based invisible images have limited swath, but...
We present a framework for cloud characterization that leverages modern unsupervised deep learning t...
Cloud classification is a great challenge in meteorological research. The different types of clouds,...
Several features that can be extracted from digital images of the sky and that can be useful for clo...
Based on the multi-spectrum samples of stationary meteorology satellite cloud images, the best disti...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
The accurate ground-based cloud classification is a challenging task and still under development. Th...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
Detecting changes in land use and land cover (LULC) from space has long been the main goal of satell...
Abstract Most existing methods only utilize the visual sensors for ground-based cloud classification...
The aim of this thesis is to analyze the performance of Convolutional Neural Networks (CNN) in the ...
Information about clouds is important for observing and predicting weather and climate as well as fo...
Clouds are one of the most important moderators of the earth radiation budget and one of the least u...
The greatest source of uncertainty in model estimates of projected climate change involve clouds and...
Cloud classification of ground-based images is a challenging task. Recent research has focused on ex...
Compared with satellite remote sensing images, ground-based invisible images have limited swath, but...
We present a framework for cloud characterization that leverages modern unsupervised deep learning t...
Cloud classification is a great challenge in meteorological research. The different types of clouds,...
Several features that can be extracted from digital images of the sky and that can be useful for clo...
Based on the multi-spectrum samples of stationary meteorology satellite cloud images, the best disti...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
The accurate ground-based cloud classification is a challenging task and still under development. Th...
We develop a deep convolutional neural network for determination of cloud types in low-resolution da...
Detecting changes in land use and land cover (LULC) from space has long been the main goal of satell...
Abstract Most existing methods only utilize the visual sensors for ground-based cloud classification...