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Fast and robust object tracking using tracking failure detection in kernelized correlation filteropen access

Authors
Shin J.Kim H.Kim D.Paik, Joonki
Issue Date
Jan-2020
Publisher
MDPI AG
Keywords
Correlation filter; Multi-domain convolutional neural network; MDNet; Real-time tracking; Visual tracking
Citation
Applied Sciences (Switzerland), v.10, no.2
Journal Title
Applied Sciences (Switzerland)
Volume
10
Number
2
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/38599
DOI
10.3390/app10020713
ISSN
2076-3417
2076-3417
Abstract
Object tracking has long been an active research topic in image processing and computer vision fields with various application areas. For practical applications, the object tracking technique should be not only accurate but also fast in a real-time streaming condition. Recently, deep feature-based trackers have been proposed to achieve a higher accuracy, but those are not suitable for real-time tracking because of an extremely slow processing speed. The slow speed is a major factor to degrade tracking accuracy under a real-time streaming condition since the processing delay forces skipping frames. To increase the tracking accuracy with preserving the processing speed, this paper presents an improved kernelized correlation filter (KCF)-based tracking method that integrates three functional modules: (i) tracking failure detection, (ii) re-tracking using multiple search windows, and (iii) motion vector analysis to decide a preferred search window. Under a real-time streaming condition, the proposed method yields better results than the original KCF in the sense of tracking accuracy, and when a target has a very large movement, the proposed method outperforms a deep learning-based tracker, such as multi-domain convolutional neural network (MDNet). © 2020 by the authors.
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Paik, Joon Ki
첨단영상대학원 (영상학과)
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