Spatiotemporal identification of anomalies in a wildlife preserve
The datasets released for the VAST Challenge 2017 comprise vehicle movement data captured with RFID sensors, chemical emission data from factories captured by gas sensors, and image attributes of the wildlife plant health obtained from satellites, all pertaining to a fictional wildlife preserve. Usi...
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sg-smu-ink.sis_research-48332021-06-07T05:37:05Z Spatiotemporal identification of anomalies in a wildlife preserve KISHAN, Bharadwaj ONG, Jason Guan Jie ZHANG, Yanrong KAM, Tin Seong The datasets released for the VAST Challenge 2017 comprise vehicle movement data captured with RFID sensors, chemical emission data from factories captured by gas sensors, and image attributes of the wildlife plant health obtained from satellites, all pertaining to a fictional wildlife preserve. Using visual analytics, a compelling hypothesis is established to link the spatiotemporal datasets to the phenomenon, where the count of a bird specimen is found to decline over a given year. Anomalies in vehicle traffic patterns are linked to proximal factory emissions, and further associated with satellite imagery that show proof of degradation in plant quality in the preserve. The evidences are supported with visualizations created in Tableau, R, QGIS & SAS-JMP. Raster image analysis is also done to identify other key features in the preserve, such as the existence of a lake. This is achieved by using NDVI and NDMI measures, which also help understand the change in climate over the years. 2017-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3831 info:doi/10.1109/VAST.2017.8585493 https://ink.library.smu.edu.sg/context/sis_research/article/4833/viewcontent/Example6_VAST_Grand_Challenge_2017_Award_for_Clear_Presentation_of_Hypotheses_and_Supporting_Evidence.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Spatiotemporal analysis Geo-spatial analytics Visual analytics Traffic pattern detection Raster image processing NDVI MITB student Databases and Information Systems Geographic Information Sciences |
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Spatiotemporal analysis Geo-spatial analytics Visual analytics Traffic pattern detection Raster image processing NDVI MITB student Databases and Information Systems Geographic Information Sciences KISHAN, Bharadwaj ONG, Jason Guan Jie ZHANG, Yanrong KAM, Tin Seong Spatiotemporal identification of anomalies in a wildlife preserve |
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The datasets released for the VAST Challenge 2017 comprise vehicle movement data captured with RFID sensors, chemical emission data from factories captured by gas sensors, and image attributes of the wildlife plant health obtained from satellites, all pertaining to a fictional wildlife preserve. Using visual analytics, a compelling hypothesis is established to link the spatiotemporal datasets to the phenomenon, where the count of a bird specimen is found to decline over a given year. Anomalies in vehicle traffic patterns are linked to proximal factory emissions, and further associated with satellite imagery that show proof of degradation in plant quality in the preserve. The evidences are supported with visualizations created in Tableau, R, QGIS & SAS-JMP. Raster image analysis is also done to identify other key features in the preserve, such as the existence of a lake. This is achieved by using NDVI and NDMI measures, which also help understand the change in climate over the years. |
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KISHAN, Bharadwaj ONG, Jason Guan Jie ZHANG, Yanrong KAM, Tin Seong |
author_facet |
KISHAN, Bharadwaj ONG, Jason Guan Jie ZHANG, Yanrong KAM, Tin Seong |
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KISHAN, Bharadwaj |
title |
Spatiotemporal identification of anomalies in a wildlife preserve |
title_short |
Spatiotemporal identification of anomalies in a wildlife preserve |
title_full |
Spatiotemporal identification of anomalies in a wildlife preserve |
title_fullStr |
Spatiotemporal identification of anomalies in a wildlife preserve |
title_full_unstemmed |
Spatiotemporal identification of anomalies in a wildlife preserve |
title_sort |
spatiotemporal identification of anomalies in a wildlife preserve |
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Institutional Knowledge at Singapore Management University |
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2017 |
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https://ink.library.smu.edu.sg/sis_research/3831 https://ink.library.smu.edu.sg/context/sis_research/article/4833/viewcontent/Example6_VAST_Grand_Challenge_2017_Award_for_Clear_Presentation_of_Hypotheses_and_Supporting_Evidence.pdf |
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