An Assessment of Land Use Land Cover Using Machine Learning Technique

This research paper presents a comprehensive assessment of the built-up area in Mysuru City over the decade spanning from 2010 to 2020, employing advanced geospatial techniques. The study aims to analyze the spatiotemporal patterns of urban expansion, land-use dynamics, and associated factors influe...

Full description

Saved in:
Bibliographic Details
Main Author: V. Pushpalatha, H. N. Mahendra, A. M. Prasad, N. Sharmila, D. Mahesh Kumar, N. M. Basavaraju, G. S. Pavithra and S. Mallikarjunaswamy
Format: Article
Language:English
Published: Technoscience Publications 2024-12-01
Series:Nature Environment and Pollution Technology
Subjects:
Online Access:https://neptjournal.com/upload-images/(25)B-4153.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832594006135013376
author V. Pushpalatha, H. N. Mahendra, A. M. Prasad, N. Sharmila, D. Mahesh Kumar, N. M. Basavaraju, G. S. Pavithra and S. Mallikarjunaswamy
author_facet V. Pushpalatha, H. N. Mahendra, A. M. Prasad, N. Sharmila, D. Mahesh Kumar, N. M. Basavaraju, G. S. Pavithra and S. Mallikarjunaswamy
author_sort V. Pushpalatha, H. N. Mahendra, A. M. Prasad, N. Sharmila, D. Mahesh Kumar, N. M. Basavaraju, G. S. Pavithra and S. Mallikarjunaswamy
collection DOAJ
description This research paper presents a comprehensive assessment of the built-up area in Mysuru City over the decade spanning from 2010 to 2020, employing advanced geospatial techniques. The study aims to analyze the spatiotemporal patterns of urban expansion, land-use dynamics, and associated factors influencing the city’s built environment. Remote sensing imagery, Geographic Information System (GIS) tools, and machine learning algorithms are leveraged to process and interpret satellite data for accurate land-cover classification. The methodology involves the acquisition and preprocessing of multi-temporal satellite imagery to delineate and map the built-up areas at different time intervals. Land-use change detection techniques are employed to identify and quantify alterations in urban morphology over the specified period. Additionally, socio-economic and environmental variables are integrated into the analysis to discern the drivers of urban growth. The outcomes of this research contribute valuable insights into urbanization dynamics and land-use planning strategies, facilitating informed decision-making for sustainable urban development.
format Article
id doaj-art-72e87afc02b8478eba4490975d34a226
institution Kabale University
issn 0972-6268
2395-3454
language English
publishDate 2024-12-01
publisher Technoscience Publications
record_format Article
series Nature Environment and Pollution Technology
spelling doaj-art-72e87afc02b8478eba4490975d34a2262025-01-20T07:13:36ZengTechnoscience PublicationsNature Environment and Pollution Technology0972-62682395-34542024-12-012342211221910.46488/NEPT.2024.v23i04.025An Assessment of Land Use Land Cover Using Machine Learning TechniqueV. Pushpalatha, H. N. Mahendra, A. M. Prasad, N. Sharmila, D. Mahesh Kumar, N. M. Basavaraju, G. S. Pavithra and S. MallikarjunaswamyThis research paper presents a comprehensive assessment of the built-up area in Mysuru City over the decade spanning from 2010 to 2020, employing advanced geospatial techniques. The study aims to analyze the spatiotemporal patterns of urban expansion, land-use dynamics, and associated factors influencing the city’s built environment. Remote sensing imagery, Geographic Information System (GIS) tools, and machine learning algorithms are leveraged to process and interpret satellite data for accurate land-cover classification. The methodology involves the acquisition and preprocessing of multi-temporal satellite imagery to delineate and map the built-up areas at different time intervals. Land-use change detection techniques are employed to identify and quantify alterations in urban morphology over the specified period. Additionally, socio-economic and environmental variables are integrated into the analysis to discern the drivers of urban growth. The outcomes of this research contribute valuable insights into urbanization dynamics and land-use planning strategies, facilitating informed decision-making for sustainable urban development.https://neptjournal.com/upload-images/(25)B-4153.pdfremote sensing, geographic information system, multispectral data, support vector machine, liss-iii, land use land cover
spellingShingle V. Pushpalatha, H. N. Mahendra, A. M. Prasad, N. Sharmila, D. Mahesh Kumar, N. M. Basavaraju, G. S. Pavithra and S. Mallikarjunaswamy
An Assessment of Land Use Land Cover Using Machine Learning Technique
Nature Environment and Pollution Technology
remote sensing, geographic information system, multispectral data, support vector machine, liss-iii, land use land cover
title An Assessment of Land Use Land Cover Using Machine Learning Technique
title_full An Assessment of Land Use Land Cover Using Machine Learning Technique
title_fullStr An Assessment of Land Use Land Cover Using Machine Learning Technique
title_full_unstemmed An Assessment of Land Use Land Cover Using Machine Learning Technique
title_short An Assessment of Land Use Land Cover Using Machine Learning Technique
title_sort assessment of land use land cover using machine learning technique
topic remote sensing, geographic information system, multispectral data, support vector machine, liss-iii, land use land cover
url https://neptjournal.com/upload-images/(25)B-4153.pdf
work_keys_str_mv AT vpushpalathahnmahendraamprasadnsharmiladmaheshkumarnmbasavarajugspavithraandsmallikarjunaswamy anassessmentoflanduselandcoverusingmachinelearningtechnique
AT vpushpalathahnmahendraamprasadnsharmiladmaheshkumarnmbasavarajugspavithraandsmallikarjunaswamy assessmentoflanduselandcoverusingmachinelearningtechnique