Real-Time Traffic Sign Detection and Recognition System for Assistive Driving

Road traffic accidents are primarily caused by drivers error. Safer roads infrastructure and facilities like traffic signs and signals are built to aid drivers on the road. But several factors affect the awareness of drivers to traffic signs including visual complexity, environmental condition, and...

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Main Authors: Santos, Adonis, Abu, Patricia Angela R, Oppus, Carlos, Reyes, Rosula SJ
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Published: Archīum Ateneo 2020
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Online Access:https://archium.ateneo.edu/ecce-faculty-pubs/77
https://doi.org/10.25046/aj050471
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Institution: Ateneo De Manila University
id ph-ateneo-arc.ecce-faculty-pubs-1076
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spelling ph-ateneo-arc.ecce-faculty-pubs-10762021-04-27T04:52:53Z Real-Time Traffic Sign Detection and Recognition System for Assistive Driving Santos, Adonis Abu, Patricia Angela R Oppus, Carlos Reyes, Rosula SJ Road traffic accidents are primarily caused by drivers error. Safer roads infrastructure and facilities like traffic signs and signals are built to aid drivers on the road. But several factors affect the awareness of drivers to traffic signs including visual complexity, environmental condition, and poor drivers education. This led to the development of different ADAs like TSDR that enhances vehicle system. More complex algorithms are implemented for improvement but this affects the performance of a real-time system. This study implements a real-time traffic sign detection and recognition system with voice alert using Python. It aims to establish the proper trade-off between accuracy and speed in the design of the system. Four pre-processing and object detection methods in different color spaces are evaluated for efficient, accurate, and fast segmentation of the region of interest. In the recognition phase, ten classification algorithms are implemented and evaluated to determine which will provide the best performance in both accuracy and processing speed for traffic sign recognition. This study has determined that Shadow and Highlight Invariant Method for the pre-processing and color segmentation stage provided the best trade-off between detection success rate (77.05%) and processing speed (31.2ms). Convolutional Neural Network for the recognition stage not only provided the best trade-off between classification accuracy (92.97%) and processing speed (7.81ms) but also has the best performance even with lesser number of training data. Embedded system implementation utilized Nvidia Jetson Nano with interface Waveshare IMX219-77 camera, Nvidia 7” LCD and generic speaker and programmed in Python with OpenCV, sci-kit learn and Pytorch libraries. It is capable of running at an adaptive frame rate from 8-12 frames per second with no detection and down to approximately 1 frame per second when there is a traffic sign detected. 2020-01-01T08:00:00Z text https://archium.ateneo.edu/ecce-faculty-pubs/77 https://doi.org/10.25046/aj050471 Electronics, Computer, and Communications Engineering Faculty Publications Archīum Ateneo Traffic sign detection and recognition embedded system computer vision machine learning convolutional neural network Computer Sciences Graphics and Human Computer Interfaces
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Traffic sign detection and recognition
embedded system
computer vision
machine learning
convolutional neural network
Computer Sciences
Graphics and Human Computer Interfaces
spellingShingle Traffic sign detection and recognition
embedded system
computer vision
machine learning
convolutional neural network
Computer Sciences
Graphics and Human Computer Interfaces
Santos, Adonis
Abu, Patricia Angela R
Oppus, Carlos
Reyes, Rosula SJ
Real-Time Traffic Sign Detection and Recognition System for Assistive Driving
description Road traffic accidents are primarily caused by drivers error. Safer roads infrastructure and facilities like traffic signs and signals are built to aid drivers on the road. But several factors affect the awareness of drivers to traffic signs including visual complexity, environmental condition, and poor drivers education. This led to the development of different ADAs like TSDR that enhances vehicle system. More complex algorithms are implemented for improvement but this affects the performance of a real-time system. This study implements a real-time traffic sign detection and recognition system with voice alert using Python. It aims to establish the proper trade-off between accuracy and speed in the design of the system. Four pre-processing and object detection methods in different color spaces are evaluated for efficient, accurate, and fast segmentation of the region of interest. In the recognition phase, ten classification algorithms are implemented and evaluated to determine which will provide the best performance in both accuracy and processing speed for traffic sign recognition. This study has determined that Shadow and Highlight Invariant Method for the pre-processing and color segmentation stage provided the best trade-off between detection success rate (77.05%) and processing speed (31.2ms). Convolutional Neural Network for the recognition stage not only provided the best trade-off between classification accuracy (92.97%) and processing speed (7.81ms) but also has the best performance even with lesser number of training data. Embedded system implementation utilized Nvidia Jetson Nano with interface Waveshare IMX219-77 camera, Nvidia 7” LCD and generic speaker and programmed in Python with OpenCV, sci-kit learn and Pytorch libraries. It is capable of running at an adaptive frame rate from 8-12 frames per second with no detection and down to approximately 1 frame per second when there is a traffic sign detected.
format text
author Santos, Adonis
Abu, Patricia Angela R
Oppus, Carlos
Reyes, Rosula SJ
author_facet Santos, Adonis
Abu, Patricia Angela R
Oppus, Carlos
Reyes, Rosula SJ
author_sort Santos, Adonis
title Real-Time Traffic Sign Detection and Recognition System for Assistive Driving
title_short Real-Time Traffic Sign Detection and Recognition System for Assistive Driving
title_full Real-Time Traffic Sign Detection and Recognition System for Assistive Driving
title_fullStr Real-Time Traffic Sign Detection and Recognition System for Assistive Driving
title_full_unstemmed Real-Time Traffic Sign Detection and Recognition System for Assistive Driving
title_sort real-time traffic sign detection and recognition system for assistive driving
publisher Archīum Ateneo
publishDate 2020
url https://archium.ateneo.edu/ecce-faculty-pubs/77
https://doi.org/10.25046/aj050471
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