This paper is on the optimization of computing resources to process geospatial image data in a cloud computing infrastructure. Parallelization was tested by combining two different strategies: image tiling and multi-threading. The objective here was to get insight on the optimal use of available processing resources in order to minimize the processing time. Maximum speedup was obtained when combining tiling and multi-threading techniques. Both techniques are complementary, but a trade-off also exists. Speedup is improved with tiling, as parts of the image can run in parallel. But reading part of the image introduces an overhead and increases the relative part of the program that can only run in serial. This limits speedup that can be achiev...
The development of the latest-generation sensors mounted on board of Earth observation platforms has...
Cloud computing has gained popularity in recent years as a new means to quickly process and share in...
Cloud computing, with its promise of virtually infinite resources, seems to suit well in solving res...
Cloud computing is an ubiquitous term that encompasses on-demand computing and related services over...
Abstract — Performance is an open issue in data intensive applications, such as image pattern recogn...
Interest in implementing and deploying many existing and new applications on cloud platforms is cont...
The increase of high-resolution spatial data and methodological developments in recent years has ena...
International audienceThis article gives a survey of state-of-the-art methods for processing remotel...
Cloud computing is a base platform for the distribution of large volumes of data and high-performanc...
Since the Open Geospatial Consortium (OGC) proposed the geospatial Web Processing Service (WPS), sta...
Cluster computing, Cloud computing and GPU computing play overlapping and complementary roles in par...
Dissertation submitted in partial fulfillment of the requirements for the Degree of Master of Scienc...
Performing point pattern analysis using Ripley's K function on point events of large size is computa...
Abstract—In this work, we leverage Cloud computing tech-nologies in scaling out data management in g...
For optical remote sensing images, an effective method to reduce or eliminate the impact of clouds i...
The development of the latest-generation sensors mounted on board of Earth observation platforms has...
Cloud computing has gained popularity in recent years as a new means to quickly process and share in...
Cloud computing, with its promise of virtually infinite resources, seems to suit well in solving res...
Cloud computing is an ubiquitous term that encompasses on-demand computing and related services over...
Abstract — Performance is an open issue in data intensive applications, such as image pattern recogn...
Interest in implementing and deploying many existing and new applications on cloud platforms is cont...
The increase of high-resolution spatial data and methodological developments in recent years has ena...
International audienceThis article gives a survey of state-of-the-art methods for processing remotel...
Cloud computing is a base platform for the distribution of large volumes of data and high-performanc...
Since the Open Geospatial Consortium (OGC) proposed the geospatial Web Processing Service (WPS), sta...
Cluster computing, Cloud computing and GPU computing play overlapping and complementary roles in par...
Dissertation submitted in partial fulfillment of the requirements for the Degree of Master of Scienc...
Performing point pattern analysis using Ripley's K function on point events of large size is computa...
Abstract—In this work, we leverage Cloud computing tech-nologies in scaling out data management in g...
For optical remote sensing images, an effective method to reduce or eliminate the impact of clouds i...
The development of the latest-generation sensors mounted on board of Earth observation platforms has...
Cloud computing has gained popularity in recent years as a new means to quickly process and share in...
Cloud computing, with its promise of virtually infinite resources, seems to suit well in solving res...