Title :
Multi-features particle PHD filtering for multiple humans tracking
Author :
Tassaphan Suwannatat;Krisana Chinnasarn;Nakorn Indra-Payoong
Author_Institution :
Knowledge and Smart Technology Research Laboratory, Faculty of Informatics, Burapha University, Sansuk, Muang, Chonburi, Thailand
Abstract :
This paper proposes multi-features visual tracking algorithm based on the particle Probability Hypothesis Density filter, which allows accurate and robust tracking under the circumstance of visual tracking. We apply a particle PHD filter implementation to the multiple humans tracking using multi-features observation that exploits skin and head-and-shoulder boundary as its prior density. The relevance of our approach to the problem of multiple humans tracking is then investigated using a tracker which is able to follow the state according to the humans´ motion. The accuracy and robustness are evaluated and compared using real visual tracking experiments.
Keywords :
"Shape","Target tracking","Face","Image edge detection","Visualization","Clutter"
Conference_Titel :
Computer Science and Engineering Conference (ICSEC), 2015 International
DOI :
10.1109/ICSEC.2015.7401442