Title :
Automatic Road Environment Classification
Author :
Tang, Isabelle ; Breckon, Toby P.
Author_Institution :
INSA de ROUEN, Rouen, France
fDate :
6/1/2011 12:00:00 AM
Abstract :
The ongoing development autonomous vehicles and adaptive vehicle dynamics present in many modern vehicles has generated a need for road environment classification - i.e., the ability to determine the nature of the current road or terrain environment from an onboard vehicle sensor. In this paper, we investigate the use of a low-cost camera vision solution capable of urban, rural, or off-road classification based on the analysis of color and texture features extracted from a driver´s perspective camera view. A feature set based on color and texture distributions is extracted from multiple regions of interest in this forward-facing camera view and combined with a trained classifier approach to resolve two road-type classification problems of varying difficulty - {off-road, on-road} environment determination and the additional multiclass road environment problem of {off-road, urban, major/trunk road and multilane motorway/carriageway}. Two illustrative classification approaches are investigated, and the results are reported over a series of real environment data. An optimal performance of ~90% correct classification is achieved for the {off-road, on-road} problem at a near real-time classification rate of 1 Hz.
Keywords :
cameras; feature extraction; image classification; image colour analysis; image sensors; image texture; learning (artificial intelligence); real-time systems; road vehicles; traffic engineering computing; adaptive vehicle dynamics; automatic road environment classification; autonomous vehicle; color analysis; feature extraction; forward-facing camera view; low-cost camera vision; machine learning; multiclass road environment; multilane carriageway; multilane motorway; off-road classification; off-road environment; on-road environment; onboard vehicle sensor; real-time classification rate; road-type classification problem; rural classification; terrain environment; texture analysis; trunk road; urban classification; Artificial neural networks; Feature extraction; Image color analysis; Image edge detection; Roads; Training; Video sequences; Color classification; machine learning classifier; road-type classification; texture classification;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2010.2095499