Title of article :
Online multiple people tracking-by-detection in crowded scenes
Author/Authors :
Rahmatian, Sahar Department of Computer Engineering - Amirkabir University of Technology , Safabakhsh, Reza Department of Computer Engineering - Amirkabir University of Technology
Abstract :
Multiple people detection and
tracking is a challenging task in real-world crowded
scenes. In this paper, we have presented an online
multiple people tracking-by-detection approach
with a single camera. We have detected objects with
deformable part models and a visual background
extractor. In the tracking phase we have used a
combination of support vector machine (SVM)
person-specific classifiers, similarity scores, the
Hungarian algorithm and inter-object occlusion
handling. Detections have been used for training
person-specific classifiers and to help guide the
trackers by computing a similarity score based on
them and spatial information and assigning them
to the trackers with the Hungarian algorithm. To
handle inter-object occlusion we have used explicit
occlusion reasoning. The proposed method does
not require prior training and does not impose
any constraints on environmental conditions.
Our evaluation showed that the proposed method
outperformed the state of the art approaches
by 10% and 15% or achieved comparable
performance
Keywords :
online tracking , crowdedscenes , tracking , detection
Journal title :
Astroparticle Physics