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http://dx.doi.org/10.17703/JCCT.2021.7.1.588

A Study on Utilizing Smartphone for CMT Object Tracking Method Adapting Face Detection  

Lee, Sang Gu (Dept. of Computer engineering, Hannam Univ.)
Publication Information
The Journal of the Convergence on Culture Technology / v.7, no.1, 2021 , pp. 588-594 More about this Journal
Abstract
Due to the recent proliferation of video contents, previous contents expressed as the character or the picture are being replaced to video and growth of video contents is being boosted because of emerging new platforms. As this accelerated growth has a great impact on the process of universalization of technology for ordinary people, video production and editing technologies that were classified as expert's areas can be easily accessed and used from ordinary people. Due to the development of these technologies, tasks like that recording and adjusting that depends on human's manual involvement could be automated through object tracking technology. Also, the process for situating the object in the center of the screen after finding the object to record could have been automated. Because the task of setting the object to be tracked is still remaining as human's responsibility, the delay or mistake can be made in the process of setting the object which has to be tracked through a human. Therefore, we propose a novel object tracking technique of CMT combining the face detection technique utilizing Haar cascade classifier. The proposed system can be applied to an effective and robust image tracking system for continuous object tracking on the smartphone in real time.
Keywords
CMT algorithm; Object tracking; Haar Cascade Classifier; Face detection;
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