Irregular spatial dependency is one of the major characteristics of remote sensing images, which brings about challenges for classification tasks. Deep supervised models such as convolutional neural networks (CNNs) have shown great capacity for remote sensing image classification. However, they generally require a huge labeled training set for the fine tuning of a deep neural network. To handle the irregular spatial dependency of remote sensing images and mitigate the conflict between limited labeled samples and training demand, we design a superpixel-guided layer-wise embedding CNN (SLE-CNN) for remote sensing image classification, which can efficiently exploit the information from both labeled and unlabeled samples. With the superpixel-gu...
We present an analysis of three possible strategies for exploiting the power of existing convolution...
Considering the classification of high spatial resolution remote sensing imagery, this paper present...
Because of recent advances in Convolutional Neural Networks (CNNs), traditional CNNs have been emplo...
Convolutional neural networks (CNNs) can adapt to more complex data, extract deeper characteristics ...
Image super-resolution (SR) techniques can benefit a wide range of applications in the remote sensin...
International audienceWe propose a convolutional neural network (CNN) model for remote sensing image...
Remote sensing scene classification converts remote sensing images into classification information t...
Data-driven deep neural networks have demonstrated their superiority in high-resolution remote-sensi...
In optical remote sensing, spatial resolution of images is crucial for numerous applications. Space-...
The new generation of remote sensing imaging sensors enables high spatial, spectral and temporal res...
As a variant of Convolutional Neural Networks (CNNs) in Deep Learning, the Fully Convolutional Netwo...
Image scene classification in the remotely sensed (RS) society is an interesting subject that aims t...
Learning powerful feature representations for image retrieval has always been a challenging task in ...
Under Consideration at Computer Vision and Image UnderstandingDeep neural networks have established ...
Learning efficient image representations is at the core of the scene classification task of remote s...
We present an analysis of three possible strategies for exploiting the power of existing convolution...
Considering the classification of high spatial resolution remote sensing imagery, this paper present...
Because of recent advances in Convolutional Neural Networks (CNNs), traditional CNNs have been emplo...
Convolutional neural networks (CNNs) can adapt to more complex data, extract deeper characteristics ...
Image super-resolution (SR) techniques can benefit a wide range of applications in the remote sensin...
International audienceWe propose a convolutional neural network (CNN) model for remote sensing image...
Remote sensing scene classification converts remote sensing images into classification information t...
Data-driven deep neural networks have demonstrated their superiority in high-resolution remote-sensi...
In optical remote sensing, spatial resolution of images is crucial for numerous applications. Space-...
The new generation of remote sensing imaging sensors enables high spatial, spectral and temporal res...
As a variant of Convolutional Neural Networks (CNNs) in Deep Learning, the Fully Convolutional Netwo...
Image scene classification in the remotely sensed (RS) society is an interesting subject that aims t...
Learning powerful feature representations for image retrieval has always been a challenging task in ...
Under Consideration at Computer Vision and Image UnderstandingDeep neural networks have established ...
Learning efficient image representations is at the core of the scene classification task of remote s...
We present an analysis of three possible strategies for exploiting the power of existing convolution...
Considering the classification of high spatial resolution remote sensing imagery, this paper present...
Because of recent advances in Convolutional Neural Networks (CNNs), traditional CNNs have been emplo...