The rapid growth of big spatial data urged the research community to develop several big spatial data systems. Regardless of their architecture, one of the fundamental requirements of all these systems is to spatially partition the data efficiently across machines. The core challenges of big spatial partitioning are building high spatial quality partitions while simultaneously taking advantages of distributed processing models by providing load balanced partitions. Previous works on big spatial partitioning are to reuse existing index search trees as-is, e.g., the R-tree family, STR, Kd-tree, and Quad-tree, by building a temporary tree for a sample of the input and use its leaf nodes as partition boundaries. However, we show in this paper t...
The KDB-tree and its variants have been reported to have good performance by us-ing them as the inde...
Large image and spatial databases are becoming more important in applications such as image archives...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
Spatial data is being produced at increasing rates from various sources such as mobile applications ...
Many emerging mobile applications require analyzing large spatial datasets. In these applications, e...
Processing of spatial queries has been studied extensively in the literature. In most cases, it is a...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
Spatial data partitioning (SDP) plays a powerful role in distributed storage and parallel computing ...
Spatial data has come to play an increasingly prominent role. Structured and unstructured data colle...
A major part of the interface to a database is made up of the queries that can be addressed to this ...
In recent years, real-time spatial applications, like location-aware services and traffic monitoring...
Abstract. Spatial indexing is a well researched field that benefited computer science with many outs...
Among spatial information applications, SpatialHadoop is one of the most important systems for resea...
Abstract—In recent years, spatial applications have become more and more important in both scientifi...
The KDB-tree and its variants have been reported to have good performance by us-ing them as the inde...
Large image and spatial databases are becoming more important in applications such as image archives...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
Spatial data is being produced at increasing rates from various sources such as mobile applications ...
Many emerging mobile applications require analyzing large spatial datasets. In these applications, e...
Processing of spatial queries has been studied extensively in the literature. In most cases, it is a...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
Spatial data partitioning (SDP) plays a powerful role in distributed storage and parallel computing ...
Spatial data has come to play an increasingly prominent role. Structured and unstructured data colle...
A major part of the interface to a database is made up of the queries that can be addressed to this ...
In recent years, real-time spatial applications, like location-aware services and traffic monitoring...
Abstract. Spatial indexing is a well researched field that benefited computer science with many outs...
Among spatial information applications, SpatialHadoop is one of the most important systems for resea...
Abstract—In recent years, spatial applications have become more and more important in both scientifi...
The KDB-tree and its variants have been reported to have good performance by us-ing them as the inde...
Large image and spatial databases are becoming more important in applications such as image archives...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...