River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid

Flood has been identified as a common issue for years. This is the evidence of the effect cause by heavy rainfall which then lead to damages of infrastructure and deaths. Not only that, the other causes like the structure of the drainage system and engineering are also contributed to flood. The pres...

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Main Author: Hamid, Nur Adilah
Format: Student Project
Language:English
Published: 2020
Subjects:
Online Access:http://ir.uitm.edu.my/id/eprint/39897/1/39897.pdf
http://ir.uitm.edu.my/id/eprint/39897/
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spelling my.uitm.ir.398972021-01-06T09:24:06Z http://ir.uitm.edu.my/id/eprint/39897/ River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid Hamid, Nur Adilah River protective works. Regulation. Flood control Electronics Detectors. Sensors. Sensor networks Computer engineering. Computer hardware Malaysia Flood has been identified as a common issue for years. This is the evidence of the effect cause by heavy rainfall which then lead to damages of infrastructure and deaths. Not only that, the other causes like the structure of the drainage system and engineering are also contributed to flood. The presence of this natural disasters can cause a lot of problems and risk especially to human being. Thus, this shows that it is very important for this issue to be addressed. The prevention of flood is almost impossible as it is a natural phenomenon. In this work, we proposed a water segmentation technique in order to analyses the images of river in term of water at the area from the camera which will automatically detect anomalies such as sudden water increase. The Deep Learning segmentation algorithm DeepLabv3 and DeepLabv3+ are trained and tested for the task of water segmentation and the performances are compared with previous works. In our finding, the accuracy obtained by our proposed method DeepLabv3 is 97.07% thus achieved the state of art in performing the task of water segmentation. Thus, DeepLabv3 model is suit and practical in the solving the flood issue. 2020-07 Student Project NonPeerReviewed text en http://ir.uitm.edu.my/id/eprint/39897/1/39897.pdf Hamid, Nur Adilah (2020) River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid. [Student Project] (Unpublished)
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic River protective works. Regulation. Flood control
Electronics
Detectors. Sensors. Sensor networks
Computer engineering. Computer hardware
Malaysia
spellingShingle River protective works. Regulation. Flood control
Electronics
Detectors. Sensors. Sensor networks
Computer engineering. Computer hardware
Malaysia
Hamid, Nur Adilah
River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid
description Flood has been identified as a common issue for years. This is the evidence of the effect cause by heavy rainfall which then lead to damages of infrastructure and deaths. Not only that, the other causes like the structure of the drainage system and engineering are also contributed to flood. The presence of this natural disasters can cause a lot of problems and risk especially to human being. Thus, this shows that it is very important for this issue to be addressed. The prevention of flood is almost impossible as it is a natural phenomenon. In this work, we proposed a water segmentation technique in order to analyses the images of river in term of water at the area from the camera which will automatically detect anomalies such as sudden water increase. The Deep Learning segmentation algorithm DeepLabv3 and DeepLabv3+ are trained and tested for the task of water segmentation and the performances are compared with previous works. In our finding, the accuracy obtained by our proposed method DeepLabv3 is 97.07% thus achieved the state of art in performing the task of water segmentation. Thus, DeepLabv3 model is suit and practical in the solving the flood issue.
format Student Project
author Hamid, Nur Adilah
author_facet Hamid, Nur Adilah
author_sort Hamid, Nur Adilah
title River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid
title_short River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid
title_full River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid
title_fullStr River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid
title_full_unstemmed River segmentation with Atrous Convolution via DeepLabv3 / Nur Adilah Hamid
title_sort river segmentation with atrous convolution via deeplabv3 / nur adilah hamid
publishDate 2020
url http://ir.uitm.edu.my/id/eprint/39897/1/39897.pdf
http://ir.uitm.edu.my/id/eprint/39897/
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score 13.214268