Early detection of high water saturation spots for landslide prediction using thermal image analysis

Landslide hazard is often discussed in electronic media and newspapers. Due to this problem, the government needs to bear millions of Malaysian ringgit to repair the infrastructures and utilities that had been ruined and to compensate the victims involved. Early warning system is one of the effectiv...

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Main Author: Aufa Huda, Muhammad Zin
Format: Thesis
Language:English
Published: 2018
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Online Access:http://umpir.ump.edu.my/id/eprint/24632/1/Early%20detection%20of%20high%20water%20saturation%20spots%20for%20landslide%20prediction%20using%20thermal%20image%20analysis.pdf
http://umpir.ump.edu.my/id/eprint/24632/
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Institution: Universiti Malaysia Pahang
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spelling my.ump.umpir.246322021-11-10T00:24:00Z http://umpir.ump.edu.my/id/eprint/24632/ Early detection of high water saturation spots for landslide prediction using thermal image analysis Aufa Huda, Muhammad Zin TK Electrical engineering. Electronics Nuclear engineering Landslide hazard is often discussed in electronic media and newspapers. Due to this problem, the government needs to bear millions of Malaysian ringgit to repair the infrastructures and utilities that had been ruined and to compensate the victims involved. Early warning system is one of the effective ways to reduce damage caused by landslides. Based on the literature found, there are many conventional methods to predict landslide that had been used previously such as remote sensing, wireless sensor network and many more. Basically, landslides happen due the many factors such as slope gradient factor, geological weathering and human-related activities such as deforestation. The main factor for landslide is water saturation, caused by heavy rain. Our naked eyes cannot see the water saturation in the soil. Hence, to solve this issue, this study investigates a new method to detect water saturation spots which is integrated with a thermal image camera to provide early detection of landslide. Thermal camera is selected because it provides accurate predictions on where landslides could occur. Thermal imaging is a technique that converts the invisible radiation into visible image for analysis and feature extraction. The images are processed using image processing software. Performance of image processing software is based on how accurate Region of Interest (ROI) detection is to eliminate unwanted pixels from an image. There are three segmentation algorithm used in this study which are HSV, K-Means and Feature Matching. The result reveals that HSV color space technique provides the best segmentation with average misclassification error equals to 0.00165 for abnormal images, 0.0061 for normal images and 0.0014 for combination of abnormal and normal images. Furthermore, the prediction method should make decision and classify the images into correct groups. Therefore, after the ROI has been detected, feature extraction and classification must be performed. Statistical based features namely minimum, maximum, mean and standard deviation were extracted from each image channels. The results show that the classifications using linear thresholding had sorted the image into correct group successfully. 2018-07 Thesis NonPeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/24632/1/Early%20detection%20of%20high%20water%20saturation%20spots%20for%20landslide%20prediction%20using%20thermal%20image%20analysis.pdf Aufa Huda, Muhammad Zin (2018) Early detection of high water saturation spots for landslide prediction using thermal image analysis. Masters thesis, Universiti Malaysia Pahang.
institution Universiti Malaysia Pahang
building UMP Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Pahang
content_source UMP Institutional Repository
url_provider http://umpir.ump.edu.my/
language English
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Aufa Huda, Muhammad Zin
Early detection of high water saturation spots for landslide prediction using thermal image analysis
description Landslide hazard is often discussed in electronic media and newspapers. Due to this problem, the government needs to bear millions of Malaysian ringgit to repair the infrastructures and utilities that had been ruined and to compensate the victims involved. Early warning system is one of the effective ways to reduce damage caused by landslides. Based on the literature found, there are many conventional methods to predict landslide that had been used previously such as remote sensing, wireless sensor network and many more. Basically, landslides happen due the many factors such as slope gradient factor, geological weathering and human-related activities such as deforestation. The main factor for landslide is water saturation, caused by heavy rain. Our naked eyes cannot see the water saturation in the soil. Hence, to solve this issue, this study investigates a new method to detect water saturation spots which is integrated with a thermal image camera to provide early detection of landslide. Thermal camera is selected because it provides accurate predictions on where landslides could occur. Thermal imaging is a technique that converts the invisible radiation into visible image for analysis and feature extraction. The images are processed using image processing software. Performance of image processing software is based on how accurate Region of Interest (ROI) detection is to eliminate unwanted pixels from an image. There are three segmentation algorithm used in this study which are HSV, K-Means and Feature Matching. The result reveals that HSV color space technique provides the best segmentation with average misclassification error equals to 0.00165 for abnormal images, 0.0061 for normal images and 0.0014 for combination of abnormal and normal images. Furthermore, the prediction method should make decision and classify the images into correct groups. Therefore, after the ROI has been detected, feature extraction and classification must be performed. Statistical based features namely minimum, maximum, mean and standard deviation were extracted from each image channels. The results show that the classifications using linear thresholding had sorted the image into correct group successfully.
format Thesis
author Aufa Huda, Muhammad Zin
author_facet Aufa Huda, Muhammad Zin
author_sort Aufa Huda, Muhammad Zin
title Early detection of high water saturation spots for landslide prediction using thermal image analysis
title_short Early detection of high water saturation spots for landslide prediction using thermal image analysis
title_full Early detection of high water saturation spots for landslide prediction using thermal image analysis
title_fullStr Early detection of high water saturation spots for landslide prediction using thermal image analysis
title_full_unstemmed Early detection of high water saturation spots for landslide prediction using thermal image analysis
title_sort early detection of high water saturation spots for landslide prediction using thermal image analysis
publishDate 2018
url http://umpir.ump.edu.my/id/eprint/24632/1/Early%20detection%20of%20high%20water%20saturation%20spots%20for%20landslide%20prediction%20using%20thermal%20image%20analysis.pdf
http://umpir.ump.edu.my/id/eprint/24632/
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