Parallel spatiotemporal autocorrelation and visualization system for large-scale remotely sensed images

Mengxia Zhu, Guangxing Wang, Tonny Oyana

Research output: Contribution to journalArticle

3 Citations (Scopus)

Abstract

Current studies on large-scale remotely sensed images are of great national importance for monitoring and evaluating global climate and ecological changes. In particular, real time distributed high-performance visualization and computation have become indispensable research components in facilitating the extraction of remotely sensed image textures to enable mining spatiotemporal patterns and dynamics of landscapes from massive geo-digital information collected from satellites. Remotely sensed images are usually highly correlated with rich landscape features. By exploiting the structures of these images and extracting their textures, fundamental insights of the landscape can be derived. Furthermore, the interdisciplinary collaboration on the remotely sensed image analysis demands multifarious expertise in a wide spectrum of fields including geography, computer science, and engineering. This paper develops a Distributed Computing System for Remotely Sensed Images framework (DCSRI) to support distributed and high performance computing for geospatial images. A new algorithm supporting parallel computing with dynamic workload balance for large images, namely Variogram-based Image Texture Extractor (VITE) for extracting image texture from massive and dynamic digital remotely sensed images is presented. The VITE algorithm is used to represent and transform the original data into image textures. The DCSRI framework has the capacity to perform high performance computing on Linux clusters or supercomputers to address the intensive computing challenges arising from large and multiple images. Advanced web technology is also exploited to enable interactive user experience with prompt visual feedback as well as good interoperability. Users can also dynamically steer the visualization and computation process by adjusting the computing parameters on-the-fly. This system leads to a great reduction of image data and provides useful information for knowledge discovery and digital image classification in a user friendly and computing efficient way.

Original languageEnglish (US)
Pages (from-to)83-103
Number of pages21
JournalJournal of Supercomputing
Volume59
Issue number1
DOIs
StatePublished - Jan 1 2012

Fingerprint

Image texture
Autocorrelation
Visualization
Distributed computer systems
Texture
Supercomputers
Image classification
Parallel processing systems
Interoperability
Computing
Computer science
Image analysis
Data mining
Variogram
Extractor
High Performance
Textures
Satellites
Distributed Computing
Feedback

All Science Journal Classification (ASJC) codes

  • Software
  • Theoretical Computer Science
  • Information Systems
  • Hardware and Architecture

Cite this

Parallel spatiotemporal autocorrelation and visualization system for large-scale remotely sensed images. / Zhu, Mengxia; Wang, Guangxing; Oyana, Tonny.

In: Journal of Supercomputing, Vol. 59, No. 1, 01.01.2012, p. 83-103.

Research output: Contribution to journalArticle

Zhu, Mengxia ; Wang, Guangxing ; Oyana, Tonny. / Parallel spatiotemporal autocorrelation and visualization system for large-scale remotely sensed images. In: Journal of Supercomputing. 2012 ; Vol. 59, No. 1. pp. 83-103.
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