Object Tracking in RGB and Infrared Imagery
Date
2018
Authors
C S, Asha
Journal Title
Journal ISSN
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Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Object tracking is the process of locating the object throughout the frames of a
video. This thesis explores tracking of an object selected by the user in RGB and
infrared imagery using correlation filters. Also, we investigate illumination invariant tracking in RGB videos using median flow tracker. Additionally, we apply the
correlation filter based tracker for multi object tracking to count the vehicles.
The correlation filters have been widely used in computer vision for matching,
detection, and tracking purposes. The basic principle of correlation filter is to learn
from a set of training data to produce desired target data. The correlation filters
appeal to the researchers due to its properties such as shift invariance, real-time speed,
immunity to noise, and efficiency. In spite of high accuracy, the correlation filter based
tracker has room for further improvements. Also, optical flow based tracker attracted
tracking community recently through median flow tracking. However, there is a scope
for an extension to achieve better accuracy. Thus, in this thesis, few improvements
are suggested to the correlation filters for tracking applications in color and infrared
imagery.
The performance of a visual tracker is always degraded due to several reasons
that include pose, size, appearance, illumination, occlusion, fast motion, blur, moving
camera and so on. However, sudden illumination variation causes the median flow
tracker to drift resulting in tracking failure. Hence, illumination invariant techniques
are studied to expand the median flow tracker for robust visual tracking.
This thesis considers the combination of discriminative and generative techniques
by switching during uncertainty of tracked locations. The proposed technique achieves
outperforming accuracy with a novel feature selection method and adaptive learning
rate for correlation filter based tracker with a conditional switching to the median
flow tracker. Later, the work extends combined complementary (discriminative and
generative) techniques to track an object in thermal infrared imagery. Finally, the proposed techniques are tested on publicly available benchmark datasets for comparative
evaluation.
iiiThe thesis also presents a novel vehicle counting algorithm using an object detector
combined with the correlation filter based multi object tracker. Results of the proposed
algorithm are validated against the manual count.
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Department of Electronics and Communication Engineering