High-Performance Computing (HPC) has recently been attracting more attention in remote sensing applications due to the challenges posed by the increased amount of open data that are produced daily by Earth Observation (EO) programs. The unique parallel computing environments and programming techniques that are integrated in HPC systems are able to solve large-scale problems such as the training of classification algorithms with large amounts of Remote Sensing (RS) data. This paper shows that the training of state-of-the-art deep Convolutional Neural Networks (CNNs) can be efficiently performed in distributed fashion using parallel implementation techniques on HPC machines containing a large number of Graphics Processing Units (GPUs). The ex...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
We present the overall goals of our research program on the application of high performance computin...
Land-cover classification methods are based on the processing of large image volumes to accurately e...
Similarly to other scientific domains, Deep Learning (DL) holds great promises to fulfil the challen...
This work proposes a novel distributed deep learning modelfor Remote Sensing (RS) images super-resol...
As a newly emerging technology, deep learning is a very promising field in big data applications. Re...
Due to the advancement of the latest-generation remote sensing instruments, a wealth of information ...
Developments in remote sensing technology have led to a continuous increase in the volume of remote-...
Processing image data generated by new remote sensing systems can severely tax the computational lim...
Developments in remote sensing technology have led to a continuous increase in the volume of remote-...
A wide variety of Remote Sensing (RS) missions arecontinuously acquiring a large volume of data ever...
Deep Learning models have proven necessary in dealing with the challenges posed by the continuous gr...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
We present the overall goals of our research program on the application of high performance computin...
Land-cover classification methods are based on the processing of large image volumes to accurately e...
Similarly to other scientific domains, Deep Learning (DL) holds great promises to fulfil the challen...
This work proposes a novel distributed deep learning modelfor Remote Sensing (RS) images super-resol...
As a newly emerging technology, deep learning is a very promising field in big data applications. Re...
Due to the advancement of the latest-generation remote sensing instruments, a wealth of information ...
Developments in remote sensing technology have led to a continuous increase in the volume of remote-...
Processing image data generated by new remote sensing systems can severely tax the computational lim...
Developments in remote sensing technology have led to a continuous increase in the volume of remote-...
A wide variety of Remote Sensing (RS) missions arecontinuously acquiring a large volume of data ever...
Deep Learning models have proven necessary in dealing with the challenges posed by the continuous gr...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep learning algorithms base their success on building high learning capacity models with millions ...
We present the overall goals of our research program on the application of high performance computin...