With the increasing requirement of accurate and up-to-date resource & environmental information for regional and global monitoring, large-region covered multi-temporal, multi-spectral massive remote sensing (RS) datasets are exploited for processing. The remote sensing data processing generally follows a complex multi-stage processing chain, which consists of several independent processing steps subject to types of RS applications. In general the RS data processing for regional environmental and disaster monitoring are recognized as typical both compute-intensive and data-intensive applications.To solve the aforementioned issues efficiently, we propose pipsCloud which combine recent Cloud computing and HPC techniques to enable large-sca...
Using computationally efficient techniques for transforming the massive amount of Remote Sensing (RS...
Advances in remote sensing hardware have led to a significantly increased capability for high-qualit...
As a newly emerging technology, deep learning is a very promising field in big data applications. Re...
Multi-area and multi-faceted remote sensing (SAR) datasets are widely used due to the increasing dem...
Multi-faceted remote sensing (SAR) and multiarea datasets are widely adopted because of the up-to-da...
The development of the latest-generation sensors mounted on board of Earth observation platforms has...
Spatiotemporal data, especially remote sensing data, are widely used in ecological, geographical, ag...
As we have entered an era of high resolution earth observation, the RS data are undergoing an explos...
Remote sensing (RS) systems have been collecting massive volumes of datasets for decades, managing a...
International audienceThis article gives a survey of state-of-the-art methods for processing remotel...
Inquiry using data from remote Earth-observing platforms often confronts a straightforward but parti...
With the rapid development of high-resolution earth observation systems, the data processing, algori...
Remote sensing instruments are continuously evolving in terms of spatial, spectral and temporal reso...
The rapid development of remote sensing (RS) technology has resulted in the proliferation of high-re...
Given the high availability of data collected by different remote sensing instruments, the data fusi...
Using computationally efficient techniques for transforming the massive amount of Remote Sensing (RS...
Advances in remote sensing hardware have led to a significantly increased capability for high-qualit...
As a newly emerging technology, deep learning is a very promising field in big data applications. Re...
Multi-area and multi-faceted remote sensing (SAR) datasets are widely used due to the increasing dem...
Multi-faceted remote sensing (SAR) and multiarea datasets are widely adopted because of the up-to-da...
The development of the latest-generation sensors mounted on board of Earth observation platforms has...
Spatiotemporal data, especially remote sensing data, are widely used in ecological, geographical, ag...
As we have entered an era of high resolution earth observation, the RS data are undergoing an explos...
Remote sensing (RS) systems have been collecting massive volumes of datasets for decades, managing a...
International audienceThis article gives a survey of state-of-the-art methods for processing remotel...
Inquiry using data from remote Earth-observing platforms often confronts a straightforward but parti...
With the rapid development of high-resolution earth observation systems, the data processing, algori...
Remote sensing instruments are continuously evolving in terms of spatial, spectral and temporal reso...
The rapid development of remote sensing (RS) technology has resulted in the proliferation of high-re...
Given the high availability of data collected by different remote sensing instruments, the data fusi...
Using computationally efficient techniques for transforming the massive amount of Remote Sensing (RS...
Advances in remote sensing hardware have led to a significantly increased capability for high-qualit...
As a newly emerging technology, deep learning is a very promising field in big data applications. Re...