Title :
A new moving object tracking method using particle filter and probability product kernel
Author :
Abdelali, Hamd Ait ; Essannouni, Fedwa ; Essannouni, Leila ; Aboutajdine, Driss
Author_Institution :
GSCM-LRIT Laboratry, Mohammed V Univ., Rabat, Morocco
Abstract :
Moving object tracking is a tricky job in computer vision problems. In this approach, the object tracking system relies on the deterministic search of target, whose color content matches a reference histogram model. A simple RGB histogram-based color model is used to develop our observation system. Secondly and finally, we describe a new approach for moving object tracking with particle filter by shape information. Particle filtering has been proven very successful for non-Gaussian and non-linear estimation problems. In this approach we combine between particle filter and the probability product kernels as a similarity measure using integral image to compute the histograms of all possible target regions of object tracking in video sequence. The shape similarity between a target and estimated regions in the video sequence is measured by their normalized histogram. Target of object tracking is created instantly by selecting an object from the video sequence by a rectangle. Experimental results have been presented to show the effectiveness of our proposed system.
Keywords :
computer vision; image colour analysis; image filtering; image sequences; nonlinear estimation; object tracking; particle filtering (numerical methods); shape recognition; video signal processing; RGB histogram-based color model; color content matching; computer vision problems; integral image; moving object tracking method; nonGaussian estimation problem; nonlinear estimation problem; normalized histogram; particle filter; probability product kernels; reference histogram model; shape information; shape similarity measure; video sequence; Image color analysis; Kernel; Object tracking; Particle filters; Target tracking; Video sequences; Computer Vision; Histogram-Based; Integral Image; Object Tracking; Particle Filter; Probability Product Kernels; Video Sequence;
Conference_Titel :
Intelligent Systems and Computer Vision (ISCV), 2015
Conference_Location :
Fez
Print_ISBN :
978-1-4799-7510-5
DOI :
10.1109/ISACV.2015.7105546