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Object Tracking in Video Using the TLD and CMT Fusion Model
Author(s) -
Hai Le Tran
Publication year - 2021
Publication title -
international journal of computer and information technology
Language(s) - English
Resource type - Journals
ISSN - 2279-0764
DOI - 10.24203/ijcit.v10i5.151
Subject(s) - thermoluminescent dosimeter , tracking (education) , computer science , video tracking , artificial intelligence , computer vision , object (grammar) , computation , fusion , tracking system , computer graphics (images) , algorithm , dosimetry , nuclear medicine , medicine , psychology , pedagogy , linguistics , philosophy , dosimeter , kalman filter
Object tracking has been an attractive study topic in computer vision in recent years, thanks to the development of video monitoring systems. Tracking-Learning Detection (TLD), Compressive Tracking (CT), and Clustering of Static-Adaptive Correspondences for Deformable Object Tracking are some of the state-of-the-art methods for motion object tracking (CMT). We present a fusion model that combines TLD and CMT in this study. To restrict the calculation time of the CMT technique, the fusion TLD CMT model enhanced the TLD benefits of computation time and accuracy on t no deformable objects. The experimental results on the Vojir dataset for three techniques (TLD, CMT, and TLD CMT) demonstrated that our fusion proposal successfully trades off CMT accuracy for computing time.

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