Distributed acoustic sensing (DAS) is an emerging technology that transforms a typical glass telecommunications cable into a network of seismic sensors. DAS may, therefore, concurrently record the vibrations of passing vehicles over tens of kilometers and shows potential to monitor traffic at a low cost with minimal maintenance. With big-data DAS recording, automatically recognizing and tracking vehicles on the road in real time still presents numerous obstacles. Therefore, we present a deep learning technique based on the unified real-time object detection algorithm to estimate traffic flow and vehicle speed in DAS data and evaluate them along a 500-m fiber length in Beijing’s suburbs. We reconstructed the DAS recordings into 1-min tempora...
peer-reviewedAcoustic data is a potential source for traffic monitoring due to its low-cost and the ...
Effective detection of traffic participants is crucial for driver assistance systems. Traffic safety...
This paper proposes a neural network that fuses the data received from a camera system on a gantry t...
Distributed Acoustic Sensing (DAS) is a novel vibration sensing technology that can be employed to d...
There is an increasing interest in researchers on the use of modern sensor networks deployed in smar...
The rapid recent advancements in the computation ability of everyday computers have made it possible...
Here, we introduce Traffic Ear, an acoustic sensor pack that determines the engine noise of each pas...
Macroscopic traffic flow variables estimation is of fundamental interest in the planning, designing ...
In urban logistics, analyzing urban traffic data plays an important role in achieving higher schedul...
Monitoring of public and private places is of great importance for security of people and is usually...
Traffic flow prediction as well as automobile speed estimation is one of the most crucial study topi...
The integration of machine learning and inter- vehicle communications enables various active safety ...
Computer vision applications are important nowadays because they provide solutions to critical probl...
Accurate real-time traffic sensing is of key importance, especially in the urban environment to be a...
A traffic monitoring system (TMS) is an integral part of Intelligent Transportation Systems (ITS). I...
peer-reviewedAcoustic data is a potential source for traffic monitoring due to its low-cost and the ...
Effective detection of traffic participants is crucial for driver assistance systems. Traffic safety...
This paper proposes a neural network that fuses the data received from a camera system on a gantry t...
Distributed Acoustic Sensing (DAS) is a novel vibration sensing technology that can be employed to d...
There is an increasing interest in researchers on the use of modern sensor networks deployed in smar...
The rapid recent advancements in the computation ability of everyday computers have made it possible...
Here, we introduce Traffic Ear, an acoustic sensor pack that determines the engine noise of each pas...
Macroscopic traffic flow variables estimation is of fundamental interest in the planning, designing ...
In urban logistics, analyzing urban traffic data plays an important role in achieving higher schedul...
Monitoring of public and private places is of great importance for security of people and is usually...
Traffic flow prediction as well as automobile speed estimation is one of the most crucial study topi...
The integration of machine learning and inter- vehicle communications enables various active safety ...
Computer vision applications are important nowadays because they provide solutions to critical probl...
Accurate real-time traffic sensing is of key importance, especially in the urban environment to be a...
A traffic monitoring system (TMS) is an integral part of Intelligent Transportation Systems (ITS). I...
peer-reviewedAcoustic data is a potential source for traffic monitoring due to its low-cost and the ...
Effective detection of traffic participants is crucial for driver assistance systems. Traffic safety...
This paper proposes a neural network that fuses the data received from a camera system on a gantry t...