DocumentCode :
2149304
Title :
A multi-feature tracking algorithm enabling adaptation to context variations
Author :
Chau, D.P. ; Bremond, F. ; Thonnat, M.
Author_Institution :
Pulsar team, INRIA Sophia Antipolis Mediterranee, Sophia-Antipolis, France
fYear :
2011
fDate :
3-4 Nov. 2011
Firstpage :
1
Lastpage :
6
Abstract :
We propose in this paper a tracking algorithm which is able to adapt itself to different scene contexts. A feature pool is used to compute the matching score between two detected objects. This feature pool includes 2D, 3D displacement distances, 2D sizes, color histogram, histogram of oriented gradient (HOG), color covariance and dominant color. An offline learning process is proposed to search for useful features and to estimate their weights for each context. In the online tracking process, a temporal window is defined to establish the links between the detected objects. This enables to find the object trajectories even if the objects are misdetected in some frames. A trajectory filter is proposed to remove noisy trajectories. Experimentation on different contexts is shown. The proposed tracker has been tested in videos belonging to three public datasets and to the Caretaker European project. The experimental results prove the effect of the proposed feature weight learning, and the robustness of the proposed tracker compared to some methods in the state of the art. The contributions of our approach over the state of the art trackers are: (i) a robust tracking algorithm based on a feature pool, (ii) a supervised learning scheme to learn feature weights for each context, (iii) a new method to quantify the reliability of HOG descriptor, (iv) a combination of color covariance and dominant color features with spatial pyramid distance to manage the case of object occlusion.
Keywords :
feature extraction; image colour analysis; image matching; object detection; object tracking; 2D sizes; HOG descriptor; color covariance; color histogram; context variation; displacement distance; dominant color features; feature pool; feature weight learning; histogram of oriented gradient; matching score; multifeature tracking algorithm; object occlusion; offline learning process; online tracking process; robust tracking algorithm; spatial pyramid distance; supervised learning scheme; temporal window; trajectory filter; Adaboost; Tracking algorithm; tracking features;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Imaging for Crime Detection and Prevention 2011 (ICDP 2011), 4th International Conference on
Conference_Location :
London
Electronic_ISBN :
978-1-84919-565-2
Type :
conf
DOI :
10.1049/ic.2011.0127
Filename :
6203678
Link To Document :
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