Multibandwidth Kernel-Based Object Tracking
Author(s) -
Roozbeh Dargazany,
Ali Soleimani,
Alireza Ahmadyfard
Publication year - 2010
Publication title -
advances in artificial intelligence
Language(s) - English
Resource type - Journals
eISSN - 1687-7489
pISSN - 1687-7470
DOI - 10.1155/2010/175603
Subject(s) - mean shift , computer science , video tracking , tracking (education) , mode (computer interface) , computer vision , artificial intelligence , kernel (algebra) , object (grammar) , kernel density estimation , bandwidth (computing) , algorithm , mathematics , pattern recognition (psychology) , telecommunications , psychology , pedagogy , statistics , combinatorics , estimator , operating system
Object tracking using Mean Shift (MS) has been attracting considerable attention recently. In this paper, we try to deal with one of its shortcoming. Mean shift is designed to find local maxima for tracking objects. Therefore, in large target movement between two consecutive frames, the local and global modes are not the same as previous frames so that Mean Shift tracker may fail in tracking the desired object via localizing the global mode. To overcome this problem, a multibandwidth procedure is proposed to helpconventional MS tracker reach the global mode of the density function using any staring points. This gradually smoothening procedure is called Multi Bandwidth Mean Shift (MBMS) which in fact smoothens the Kernel Function through a multiple kernel-based sampling procedure automatically. Since it is important for us to have less computational complexity for real-time applications, we try to decrease the number of iterations to reach the global mode. Based on our results, this proposed version of MS enables us to track an object with the same initial point much faster than conventional MS tracker
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