Javascript must be enabled to continue!
Predicting Traffic Sign Retro-Reflectivity Degradation Using Deep Neural Networks
View through CrossRef
Traffic signs are essential for the safe and efficient movement of vehicles through the transportation network. Poor sign visibility can lead to accidents. One of the key properties used to measure the visibility of a traffic sign is retro-reflection, which indicates how much light a traffic sign reflects back to the driver. The retro-reflection of the traffic sign degrades over time until it reaches a point where the traffic sign has to be changed or repaired. Several studies have explored the idea of modeling the sign degradation level to help the authorities in effective scheduling of sign maintenance. However, previous studies utilized simpler models and proposed multiple models for different combinations of the sheeting type and color used for the traffic sign. In this study, we present a neural network based deep learning model for traffic sign retro-reflectivity prediction. Data utilized in this study was collected using a handheld retro-reflectometer GR3 from field surveys of traffic signs. Sign retro-reflective measurements (i.e., the RA values) were taken for different sign sheeting brands, grades, colors, orientation angles, observation angles, and aging periods. Feature-based sensitivity analysis was conducted to identify variables’ relative importance in determining retro-reflectivity. Results show that the sheeting color and observation angle were the most significant variables, whereas sign orientation was the least important. Considering all the features, RA prediction results obtained from one-hot encoding outperformed other models reported in the literature. The findings of this study demonstrate the feasibility and robustness of the proposed neural network based deep learning model in predicting the sign retro-reflectivity.
Title: Predicting Traffic Sign Retro-Reflectivity Degradation Using Deep Neural Networks
Description:
Traffic signs are essential for the safe and efficient movement of vehicles through the transportation network.
Poor sign visibility can lead to accidents.
One of the key properties used to measure the visibility of a traffic sign is retro-reflection, which indicates how much light a traffic sign reflects back to the driver.
The retro-reflection of the traffic sign degrades over time until it reaches a point where the traffic sign has to be changed or repaired.
Several studies have explored the idea of modeling the sign degradation level to help the authorities in effective scheduling of sign maintenance.
However, previous studies utilized simpler models and proposed multiple models for different combinations of the sheeting type and color used for the traffic sign.
In this study, we present a neural network based deep learning model for traffic sign retro-reflectivity prediction.
Data utilized in this study was collected using a handheld retro-reflectometer GR3 from field surveys of traffic signs.
Sign retro-reflective measurements (i.
e.
, the RA values) were taken for different sign sheeting brands, grades, colors, orientation angles, observation angles, and aging periods.
Feature-based sensitivity analysis was conducted to identify variables’ relative importance in determining retro-reflectivity.
Results show that the sheeting color and observation angle were the most significant variables, whereas sign orientation was the least important.
Considering all the features, RA prediction results obtained from one-hot encoding outperformed other models reported in the literature.
The findings of this study demonstrate the feasibility and robustness of the proposed neural network based deep learning model in predicting the sign retro-reflectivity.
Related Results
RETRO AS AN OBJECT OF LINGUISTIC STUDY
RETRO AS AN OBJECT OF LINGUISTIC STUDY
The article deals with retro as a separate object of linguistic study. Rapid informatization and digitalization raise demand for the «aesthetics of the past», which results in prom...
TYPES OF AI ALGORİTHMS USED İN TRAFFİC FLOW PREDİCTİON
TYPES OF AI ALGORİTHMS USED İN TRAFFİC FLOW PREDİCTİON
The increasing complexity of urban transportation systems and the growing volume of vehicles have made traffic congestion a persistent challenge in modern cities. Efficient traffic...
Traffic Prediction in 5G Networks Using Machine Learning
Traffic Prediction in 5G Networks Using Machine Learning
The advent of 5G technology promises a paradigm shift in the realm of
telecommunications, offering unprecedented speeds and connectivity. However, the
...
Smart Traffic Control Using Computer Vision
Smart Traffic Control Using Computer Vision
A Smart Traffic Control System using Computer Vision utilizes cameras, image processing techniques, and machine learning algorithms to monitor, analyze, and manage traffic flow aut...
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Objective: To determine the frequency of common chromosomal aberrations in local population idiopathic determine the frequency of common chromosomal aberrations in local population...
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
Traffic safety outcomes of traffic law application and the adoption of new technology in traffic control
Traffic safety outcomes of traffic law application and the adoption of new technology in traffic control
Experience of the State of Qatar
Introduction:
Since the second half of the last decade of the twentieth century, Qatar has witnessed the
implementation of a comprehensive developm...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...

