info:eu-repo/semantics/article
Estimating the queue length at street intersections by using a movement feature space approach
Fecha
2014-07Registro en:
Negri, Pablo Augusto; Estimating the queue length at street intersections by using a movement feature space approach; Institution of Engineering and Technology; Iet Image Processing; 8; 7; 7-2014; 406-416
1751-9659
1751-9667
CONICET Digital
CONICET
Autor
Negri, Pablo Augusto
Resumen
This study aims to estimate the traffic load at street intersections obtaining the circulating vehicle number through image processing and pattern recognition. The algorithm detects moving objects in a street view by using level lines and generates a new feature space called movement feature space (MFS). The MFS generates primitives as segments and corners to match vehicle model generating hypotheses. The MFS is also grouped in a histogram configuration called histograms of oriented level lines (HO2 L). This work uses HO2 L features to validate vehicle hypotheses comparing the performance of different classifiers: linear support vector machine (SVM), non-linear SVM, neural networks and boosting. On average, successful detection rate is of 86% with 10-1 false positives per image for highly occluded images.