Citation:
Intelligent Transportation Systems - (ITSC), 2013 16th International IEEE Conference on. : Ieee - The Institute Of Electrical And Electronics Engineers, Inc. Pp. 1364-1369
ISBN:
978-1-4799-2914-6
Sponsor:
This work was supported by the Spanish Government through the
Cicyt projects FEDORA (GRANT TRA2010-20225-C03- 01) and Driver
Distraction Detector System (GRANT TRA2011-29454-C03-02), and by
the Comunidad de Madrid through the project SEGVAUTO (S2009/DPI-
1509).
Project:
Gobierno de España. TRA2010-20225-C03-01 Gobierno de España. TRA2013-48314-C3-1-R Gobierno de España. TRA2011-29454-C03-02 Comunidad de Madrid. S2009/DPI- 1509
This paper presents an approach on detection of largely occluded pedestrians. From a pair of synchronized cameras in the Visible Light (VL) and Far Infrared (FIR) spectrum individual detections are combined and final confidence is inferred using a small set ofThis paper presents an approach on detection of largely occluded pedestrians. From a pair of synchronized cameras in the Visible Light (VL) and Far Infrared (FIR) spectrum individual detections are combined and final confidence is inferred using a small set of logic rules via a Markov Logic Network. Pedestrians not entirely contained in the image or occluded are detected based on the binary classification on subparts of the detection window. The presented method is applied to a pedestrian classification problem in urban environments. The classifier has been tested in an Intelligent Transportation System (ITS) platform as part of an Advanced Driver Assistance Systems (ADAS).[+][-]