DocumentCode :
2721613
Title :
SHAHED: A MapReduce-based system for querying and visualizing spatio-temporal satellite data
Author :
Eldawy, Ahmed ; Mokbel, Mohamed F. ; Alharthi, Saif ; Alzaidy, Abdulhadi ; Tarek, Kareem ; Ghani, Sohaib
Author_Institution :
Dept. of Comput. Sci. & Eng., Univ. of Minnesota, Minneapolis, MN, USA
fYear :
2015
fDate :
13-17 April 2015
Firstpage :
1585
Lastpage :
1596
Abstract :
Remote sensing data collected by satellites are now made publicly available by several space agencies. This data is very useful for scientists pursuing research in several applications including climate change, desertification, and land use change. The benefit of this data comes from its richness as it provides an archived history for over 15 years of satellite observations for natural phenomena such as temperature and vegetation. Unfortunately, the use of such data is very limited due to the huge size of archives (> 500TB) and the limited capabilities of traditional applications. This paper introduces SHAHED; a MapReduce-based system for querying, visualizing, and mining large scale satellite data. SHAHED considers both the spatial and temporal aspects of the data to provide efficient query processing at large scale. The core of SHAHED is composed of four main components. The uncertainty component recovers missing data in the input which comes from cloud coverage and satellite mis-alignment. The indexing component provides a novel multi-resolution quad-tree-based spatio-temporal index structure, which indexes satellite data efficiently with minimal space overhead. The querying component answers selection and aggregate queries in real-time using the constructed index. Finally, the visualization component uses MapReduce programs to generate heat map images and videos for user queries. A set of experiments running on a live system deployed on a cluster of machines show the efficiency of the proposed design. All the features supported by SHAHED are made accessible through an easy to use Web interface that hides the complexity of the system and provides a nice user experience.
Keywords :
artificial satellites; data handling; data visualisation; database indexing; geographic information systems; parallel programming; quadtrees; query processing; remote sensing; spatiotemporal phenomena; user interfaces; MapReduce-based System; SHAHED; Web interface; climate change; cloud coverage; data archives; desertification; heat map image generation; heat map video generation; indexing component; land use change; large-scale satellite data mining; large-scale satellite data query; large-scale satellite data visualization; live system; minimal space overhead; missing data recovery; multiresolution quad-tree-based spatio-temporal index structure; natural phenomena; query aggregation; query processing; query selection; querying component; remote sensing data collection; satellite data indexes; satellite misalignment; satellite observations; space agencies; spatial aspects; spatio-temporal satellite data query; spatio-temporal satellite data visualization; temporal aspects; uncertainty component; user experience; user queries; Aggregates; Data visualization; Heating; Indexing; Satellites; Uncertainty;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Data Engineering (ICDE), 2015 IEEE 31st International Conference on
Conference_Location :
Seoul
Type :
conf
DOI :
10.1109/ICDE.2015.7113427
Filename :
7113427
Link To Document :
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