Ice Detection for Small Lakes with Satellite Imagery and Machine Learning

The role of satellite imagery in the continuous surface classification of the Earth has grown rapidly through the start of the 21st century. Advancements in machine learning and satellite imaging technology have facilitated the realisation of automated ice cover detection. Whilst sea ice detection h...

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Bibliographic Details
Main Author: Arjanne, Juho
Other Authors: Nyman, Samuli, Sähkötekniikan korkeakoulu, Lassila, Pasi, Aalto-yliopisto, Aalto University
Format: Bachelor Thesis
Language:English
Published: 2024
Subjects:
Online Access:https://aaltodoc.aalto.fi/handle/123456789/132867
Description
Summary:The role of satellite imagery in the continuous surface classification of the Earth has grown rapidly through the start of the 21st century. Advancements in machine learning and satellite imaging technology have facilitated the realisation of automated ice cover detection. Whilst sea ice detection has garnered great interest from researchers, the detection of lake ice has amassed considerably less focus. Specifically, few studies have evaluated ice detection methods for small lakes, which, albeit less prominent than larger water bodies, possess environmental and economic significance. This bachelor's thesis compares combinations of prevalent satellite imagery technologies and machine learning methods to find the optimal combination for small-lake ice detection. To discern the prevalent machine learning methods and imaging technologies, the trends and results of previous ice detection studies were explored. Synthetic aperture radar (SAR) and multispectral imaging (MSI) were identified as the two major imaging technologies applied to ice detection. For the machine learning methods, support vector machines (SVMs) and convolutional neural networks (CNNs) were found to be widely employed for ice detection research. The open availability and resolution of the SAR and MSI data provided by the Sentinel-1 and Sentinel-2 pairs of satellites led to their selection as the data source for an ice detection experiment detailed in this thesis. The experiment was performed by constructing several machine learning models for each combination of the chosen satellite imagery technologies and machine learning methods. The models were trained and initially assessed on data from two Canadian lakes. The global applicability of the models was then evaluated with a test set of images from lakes, which were not sources for the training set. The results of the experiment showed a significant difference in water-ice classification performance between the SAR and MSI models. Perfect validation accuracies were achieved with the MSI models, ...