Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment

Vegetation is a fundamental component in urban ecosystems which provide human beings with various ecosystem services. Land changes due to rapid urbanization worldwide cause an unbalanced distribution of various vegetation types, which is difficult to map and characterize. Alt...

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Other Authors: Shi, Di (authoraut)
Format: Others
Language:English
English
Published: Florida State University
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Online Access:http://purl.flvc.org/fsu/fd/FSU_2016SP_Shi_fsu_0071E_13082
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spelling ndltd-fsu.edu-oai-fsu.digital.flvc.org-fsu_3605422020-06-24T03:07:29Z Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment Shi, Di (authoraut) Yang, Xiaojun (professor directing dissertation) Liu, Xiuwen (university representative) Mesev, Victor (committee member) Uejio, Christopher K. (committee member) Florida State University (degree granting institution) College of Social Sciences and Public Policy (degree granting college) Department of Geography (degree granting department) Text text Florida State University Florida State University English eng 1 online resource (134 pages) computer application/pdf Vegetation is a fundamental component in urban ecosystems which provide human beings with various ecosystem services. Land changes due to rapid urbanization worldwide cause an unbalanced distribution of various vegetation types, which is difficult to map and characterize. Although many efforts have been made to examine the potential drivers of land changes, the specific processes leading to the spatial heterogeneity of vegetation patterns have not been fully understood. The overall objective of this research is to identify a remote sensing and GIS-based approach to help improve vegetation mapping in a complex urban area and to examine the factors shaping the observed vegetation patterns in the Atlanta metropolitan area as a case study site. The dissertation has gone through several major components. First, the algorithmic parameters affecting image classification accuracy by random forests are evaluated using both the classifier's accuracy and the map accuracy. Second, the performance of random forests for classifying complex landscape types relative to several popular classifiers including Gaussian maximum likelihood, support vector machines, and artificial neural networks is evaluated. Third, a multiple classifier system is further developed to derive a land cover map emphasizing various vegetation types for the study site. Last, the spatial patterns of various vegetation types are quantified using landscape metrics, and the factors shaping the observed vegetation patterns are explained from the biophysical, socioeconomic, and geographical perspectives at multiple observational levels using GIS and statistical analysis. Overall, this study has contributed to a better understanding of human and natural interactions in a complex urban environment through the combined use of remote sensing, GIS-based spatial analysis, and landscape metrics. A Dissertation submitted to the Department of Geography in partial fulfillment of the Doctor of Philosophy. Spring Semester 2016. March 25, 2016. GIS, Image Classification, Remote Sensing, Statistical method, Vegetation Includes bibliographical references. Xiaojun Yang, Professor Directing Dissertation; Xiuwen Liu, University Representative; Victor Mesev, Committee Member; Christopher Uejio, Committee Member. Geography FSU_2016SP_Shi_fsu_0071E_13082 http://purl.flvc.org/fsu/fd/FSU_2016SP_Shi_fsu_0071E_13082 This Item is protected by copyright and/or related rights. You are free to use this Item in any way that is permitted by the copyright and related rights legislation that applies to your use. For other uses you need to obtain permission from the rights-holder(s). The copyright in theses and dissertations completed at Florida State University is held by the students who author them. http://diginole.lib.fsu.edu/islandora/object/fsu%3A360542/datastream/TN/view/Integrating%20Remote%20Sensing%20with%20Geospatial%20Analysis%20to%20Map%20and%20Interpret%20Vegetation%20Patterns%20in%20an%20Urban%20%20%20%20%20%20%20%20%20%20%20%20%20%20%20%20%20Environment.jpg
collection NDLTD
language English
English
format Others
sources NDLTD
topic Geography
spellingShingle Geography
Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment
description Vegetation is a fundamental component in urban ecosystems which provide human beings with various ecosystem services. Land changes due to rapid urbanization worldwide cause an unbalanced distribution of various vegetation types, which is difficult to map and characterize. Although many efforts have been made to examine the potential drivers of land changes, the specific processes leading to the spatial heterogeneity of vegetation patterns have not been fully understood. The overall objective of this research is to identify a remote sensing and GIS-based approach to help improve vegetation mapping in a complex urban area and to examine the factors shaping the observed vegetation patterns in the Atlanta metropolitan area as a case study site. The dissertation has gone through several major components. First, the algorithmic parameters affecting image classification accuracy by random forests are evaluated using both the classifier's accuracy and the map accuracy. Second, the performance of random forests for classifying complex landscape types relative to several popular classifiers including Gaussian maximum likelihood, support vector machines, and artificial neural networks is evaluated. Third, a multiple classifier system is further developed to derive a land cover map emphasizing various vegetation types for the study site. Last, the spatial patterns of various vegetation types are quantified using landscape metrics, and the factors shaping the observed vegetation patterns are explained from the biophysical, socioeconomic, and geographical perspectives at multiple observational levels using GIS and statistical analysis. Overall, this study has contributed to a better understanding of human and natural interactions in a complex urban environment through the combined use of remote sensing, GIS-based spatial analysis, and landscape metrics. === A Dissertation submitted to the Department of Geography in partial fulfillment of the Doctor of Philosophy. === Spring Semester 2016. === March 25, 2016. === GIS, Image Classification, Remote Sensing, Statistical method, Vegetation === Includes bibliographical references. === Xiaojun Yang, Professor Directing Dissertation; Xiuwen Liu, University Representative; Victor Mesev, Committee Member; Christopher Uejio, Committee Member.
author2 Shi, Di (authoraut)
author_facet Shi, Di (authoraut)
title Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment
title_short Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment
title_full Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment
title_fullStr Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment
title_full_unstemmed Integrating Remote Sensing with Geospatial Analysis to Map and Interpret Vegetation Patterns in an Urban Environment
title_sort integrating remote sensing with geospatial analysis to map and interpret vegetation patterns in an urban environment
publisher Florida State University
url http://purl.flvc.org/fsu/fd/FSU_2016SP_Shi_fsu_0071E_13082
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