Title
Vehicle Classification Algorithm based on Binary Proximity Magnetic Sensors and Neural Network
Abstract
To improve the classification accuracy, a new algorithm is developed with binary proximity magnetic sensors and back propagation neural networks. In this scheme, we use the low cost and high sensitive magnetic sensors that detect the magnetic field distortion when vehicle pass by it and estimate vehicle length with the geometrical characteristics of binary proximity networks, and finally classify vehicles via neural networks. The inputs to the neural networks are the vehicle length, velocity and the sequence of features vector set, and the output is predefined vehicle category. Simulation and on-road experiment obtains the high recognition rate of 93.61%. It verified that this scheme enhances the vehicle classification with high accuracy and solid robustness.
Year
DOI
Venue
2008
10.1109/ITSC.2008.4732522
ITSC
Keywords
Field
DocType
traffic engineering computing,back propagation neural networks,vehicles,backpropagation,high sensitive magnetic sensors,magnetic field distortion,vehicle classification algorithm,neural nets,binary proximity magnetic sensors,magnetic sensors,feature vector,neural network,intelligent transportation systems,magnetic field
Magnetic field,Vehicle category,Algorithm,Robustness (computer science),Engineering,Intelligent transportation system,Backpropagation,Artificial neural network,Distortion,Binary number
Conference
Volume
Issue
ISSN
null
null
null
ISBN
Citations 
PageRank 
978-1-4244-2112-1
4
0.57
References 
Authors
7
5
Name
Order
Citations
PageRank
Wei Zhang1164.15
Guozhen Tan216632.93
Nan Ding312730.26
yao shang440.57
Ming-Wen Lin5121.33