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Land cover classification using machine-learning techniques applied to fused multi-modal satellite imagery and time series data

Sarelli, Anastasia LU (2024) In Master Thesis in Geographical Information Science GISM01 20232
Dept of Physical Geography and Ecosystem Science
Abstract
Land cover classification is one of the most studied topics in the field of remote sensing, involving the use of data from satellite sensors to analyze and categorize different land surface types. There are numerous satellite products available, each offering different spatial, spectral, and temporal resolutions. Consequently, several methodologies have been developed to efficiently determine land cover using remote sensing imagery according to the spectral characteristics of each land cover category.

The objective of this thesis is to classify an area located in the Ionian region of Greece, identifying ‘Artificial’, ‘Bare Soil’, ‘Cropland’, ‘Dense Forest’, ‘Grassland’, ‘Low-density Urban’, ‘Low/Sparse Vegetation, and ‘Water’ classes.... (More)
Land cover classification is one of the most studied topics in the field of remote sensing, involving the use of data from satellite sensors to analyze and categorize different land surface types. There are numerous satellite products available, each offering different spatial, spectral, and temporal resolutions. Consequently, several methodologies have been developed to efficiently determine land cover using remote sensing imagery according to the spectral characteristics of each land cover category.

The objective of this thesis is to classify an area located in the Ionian region of Greece, identifying ‘Artificial’, ‘Bare Soil’, ‘Cropland’, ‘Dense Forest’, ‘Grassland’, ‘Low-density Urban’, ‘Low/Sparse Vegetation, and ‘Water’ classes. To do so, the study investigates the performance of different techniques for processing and integrating remote sensing data obtained from various sensors. Multi-spectral and thermal imagery are employed, as well as topographic data from the area of interest. Landsat 8 and Landsat 9 images were specifically chosen for this project, as they include both multi-spectral and thermal information in a single acquisition. Additionally, ASTER GDEM data was used for elevation information and the generation of two elevation derivatives, the aspect and the slope of the study area. These factors, along with their temporal variability, are considered crucial as the spectral properties of certain key classes (specifically those related to vegetation and agricultural activities) are influenced by the phenological cycle.

The study addresses several research questions, including the impact of thermal information, elevation, and topography on the classification accuracy, as well as the utilization of time series data to enhance the results compared to using only the multispectral information as input. The findings indicate that combining multi-spectral data with either terrain information, thermal infrared bands, or both, significantly improves the classification results using both k-Nearest Neighbor and Random Forests classifiers. The highest performance in classification accuracy is achieved when incorporating the time series information of all the aforementioned factors as input to the Random Forests classifier. This integration yields improvements of up to 68% in specific classes, primarily those associated with vegetation. (Less)
Popular Abstract
Land cover classification is one of the most studied topics in the field of remote sensing, involving the use of data from satellite sensors to analyze and categorize different land surface types. There are numerous satellite products available, each offering different spatial, spectral, and temporal resolutions. In this study, satellite imagery, alongside elevation data and time series are utilized with the goal to categorize diverse land cover types with precision.

The primary goal is to classify an area located in the Ionian region of Greece using Machine Learning techniques into specific categories such as ‘Artificial,’ ‘Bare Soil,’ ‘Cropland,’ ‘Dense Forest,’ ‘Grassland,’ ‘Low-density Urban,’ ‘Low/Sparse Vegetation,’ and ‘Water.’... (More)
Land cover classification is one of the most studied topics in the field of remote sensing, involving the use of data from satellite sensors to analyze and categorize different land surface types. There are numerous satellite products available, each offering different spatial, spectral, and temporal resolutions. In this study, satellite imagery, alongside elevation data and time series are utilized with the goal to categorize diverse land cover types with precision.

The primary goal is to classify an area located in the Ionian region of Greece using Machine Learning techniques into specific categories such as ‘Artificial,’ ‘Bare Soil,’ ‘Cropland,’ ‘Dense Forest,’ ‘Grassland,’ ‘Low-density Urban,’ ‘Low/Sparse Vegetation,’ and ‘Water.’ This classification is achieved through the analysis of multispectral and thermal imagery, as well as topographic data from the area of interest. Landsat 8 and Landsat 9 images were specifically chosen for this project, as they include both multispectral and thermal information in a single acquisition. Additionally, ASTER GDEM data was used for elevation information and the generation of two elevation derivatives, the aspect and the slope of the study area. These factors, along with their temporal variability, are considered crucial as the spectral properties of certain key classes (specifically those related to vegetation and agricultural activities) are influenced by the phenological cycle.

The study addresses several research questions, exploring the influence of thermal information, elevation, and topography on classification accuracy. Additionally, it investigates the synergy of time series data with multispectral information to enhance classification results. The findings indicated that combining multispectral data with either terrain information, thermal infrared bands, or both, significantly improves the classification. The highest performance in classification accuracy was achieved when incorporating the time series information of all the aforementioned factors as input to the Random Forests classifier. This integration yielded improvements of up to 68% in specific classes, primarily those associated with vegetation. These outcomes support existing literature, highlighting the potential benefits of integrating diverse data sources for more accurate land cover classification, contributing valuable insights to the field. (Less)
Please use this url to cite or link to this publication:
author
Sarelli, Anastasia LU
supervisor
organization
course
GISM01 20232
year
type
H2 - Master's Degree (Two Years)
subject
keywords
Geography, GIS, Land Cover Classification, Landsat, Machine Learning
publication/series
Master Thesis in Geographical Information Science
report number
170
language
English
id
9147315
date added to LUP
2024-01-30 15:44:29
date last changed
2024-01-30 15:44:29
@misc{9147315,
  abstract     = {{Land cover classification is one of the most studied topics in the field of remote sensing, involving the use of data from satellite sensors to analyze and categorize different land surface types. There are numerous satellite products available, each offering different spatial, spectral, and temporal resolutions. Consequently, several methodologies have been developed to efficiently determine land cover using remote sensing imagery according to the spectral characteristics of each land cover category.

The objective of this thesis is to classify an area located in the Ionian region of Greece, identifying ‘Artificial’, ‘Bare Soil’, ‘Cropland’, ‘Dense Forest’, ‘Grassland’, ‘Low-density Urban’, ‘Low/Sparse Vegetation, and ‘Water’ classes. To do so, the study investigates the performance of different techniques for processing and integrating remote sensing data obtained from various sensors. Multi-spectral and thermal imagery are employed, as well as topographic data from the area of interest. Landsat 8 and Landsat 9 images were specifically chosen for this project, as they include both multi-spectral and thermal information in a single acquisition. Additionally, ASTER GDEM data was used for elevation information and the generation of two elevation derivatives, the aspect and the slope of the study area. These factors, along with their temporal variability, are considered crucial as the spectral properties of certain key classes (specifically those related to vegetation and agricultural activities) are influenced by the phenological cycle.

The study addresses several research questions, including the impact of thermal information, elevation, and topography on the classification accuracy, as well as the utilization of time series data to enhance the results compared to using only the multispectral information as input. The findings indicate that combining multi-spectral data with either terrain information, thermal infrared bands, or both, significantly improves the classification results using both k-Nearest Neighbor and Random Forests classifiers. The highest performance in classification accuracy is achieved when incorporating the time series information of all the aforementioned factors as input to the Random Forests classifier. This integration yields improvements of up to 68% in specific classes, primarily those associated with vegetation.}},
  author       = {{Sarelli, Anastasia}},
  language     = {{eng}},
  note         = {{Student Paper}},
  series       = {{Master Thesis in Geographical Information Science}},
  title        = {{Land cover classification using machine-learning techniques applied to fused multi-modal satellite imagery and time series data}},
  year         = {{2024}},
}