Study of footpaths in Singapore using image recognition model

With the rise of alternative transportation means such as cycling and PMDs, pedestrian footpaths face a rapidly changing demographic as more users switch to these vehicles for their first and last mile solutions. Comfortability of footpaths for users, thus, becomes an increasingly important factor f...

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Main Author: Tan, Michele Yi Hui
Other Authors: Zhu Feng
Format: Final Year Project
Language:English
Published: 2018
Subjects:
Online Access:http://hdl.handle.net/10356/75627
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-756272023-03-03T17:13:21Z Study of footpaths in Singapore using image recognition model Tan, Michele Yi Hui Zhu Feng School of Civil and Environmental Engineering DRNTU::Engineering::Civil engineering::Construction management With the rise of alternative transportation means such as cycling and PMDs, pedestrian footpaths face a rapidly changing demographic as more users switch to these vehicles for their first and last mile solutions. Comfortability of footpaths for users, thus, becomes an increasingly important factor for users who travel every day. While conventional indexes exist for common footpaths, Singapore’s footpaths are out of the norm due to the existence of drainage covers. As such, drainage covers may pose as an additional factor for pavement comfortability, especially for cyclists whose journeys are the most affected by evenness of the pavement. This project is the initial exploration of programming an automatic system for measuring comfortability indexes or level of service of footpaths for cyclists. Image recognition models are used to identify the existence of drainage covers along footpaths as drainage covers are factors contributing to the comfortability index of footpaths. The model is trained on a series of data images collected around Singapore and adjusted to determine the most optimal outcome. It was found that a larger dataset, coupled with a smaller learning rate and training batch size, significantly improved the classification accuracy of the model while saving computational time. The model was able to efficiently achieve an accuracy of 80% with an average analysis time of 5 min. Bachelor of Engineering (Civil) 2018-06-05T08:42:48Z 2018-06-05T08:42:48Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/75627 en Nanyang Technological University 60 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Civil engineering::Construction management
spellingShingle DRNTU::Engineering::Civil engineering::Construction management
Tan, Michele Yi Hui
Study of footpaths in Singapore using image recognition model
description With the rise of alternative transportation means such as cycling and PMDs, pedestrian footpaths face a rapidly changing demographic as more users switch to these vehicles for their first and last mile solutions. Comfortability of footpaths for users, thus, becomes an increasingly important factor for users who travel every day. While conventional indexes exist for common footpaths, Singapore’s footpaths are out of the norm due to the existence of drainage covers. As such, drainage covers may pose as an additional factor for pavement comfortability, especially for cyclists whose journeys are the most affected by evenness of the pavement. This project is the initial exploration of programming an automatic system for measuring comfortability indexes or level of service of footpaths for cyclists. Image recognition models are used to identify the existence of drainage covers along footpaths as drainage covers are factors contributing to the comfortability index of footpaths. The model is trained on a series of data images collected around Singapore and adjusted to determine the most optimal outcome. It was found that a larger dataset, coupled with a smaller learning rate and training batch size, significantly improved the classification accuracy of the model while saving computational time. The model was able to efficiently achieve an accuracy of 80% with an average analysis time of 5 min.
author2 Zhu Feng
author_facet Zhu Feng
Tan, Michele Yi Hui
format Final Year Project
author Tan, Michele Yi Hui
author_sort Tan, Michele Yi Hui
title Study of footpaths in Singapore using image recognition model
title_short Study of footpaths in Singapore using image recognition model
title_full Study of footpaths in Singapore using image recognition model
title_fullStr Study of footpaths in Singapore using image recognition model
title_full_unstemmed Study of footpaths in Singapore using image recognition model
title_sort study of footpaths in singapore using image recognition model
publishDate 2018
url http://hdl.handle.net/10356/75627
_version_ 1759856023175168000