Title :
Improving particle filter with support vector regression for efficient visual tracking
Author :
Zhu, Guangyu ; Liang, Dawei ; Liu, Yang ; Huang, Qingming ; Gao, Wen
Author_Institution :
Dept. of Comput. Sci., Harbin Inst. of Technol., China
Abstract :
Particle filter is a powerful visual tracking tool based on sequential Monte Carlo framework, and it needs large numbers of samples to properly approximate the posterior density of the state evolution. However, its efficiency degenerates if too many samples are applied. In this paper, an improved particle filter is proposed by integrating support vector regression into sequential Monte Carlo framework to enhance the performance of particle filter with small sample set. The proposed particle filter utilizes an SVR based re-weighting scheme to re-approximate the posterior density and avoid sample impoverishment. Firstly, a regression function is obtained by support vector regression method over the weighted sample set. Then, each sample is re-weighted via the regression function. Finally, ameliorative posterior density of the state is re-approximated to maintain the effectiveness and diversity of samples. Experimental results demonstrate that the proposed particle filter improves the efficiency of tracking system effectively and outperforms classical particle filter.
Keywords :
Monte Carlo methods; particle filtering (numerical methods); regression analysis; tracking; particle filter; regression function; reweighting scheme; sequential Monte Carlo framework; support vector regression; visual tracking; Computational efficiency; Computer science; Computer vision; Degradation; Linearity; Monte Carlo methods; Particle filters; Particle tracking; Sampling methods; Smoothing methods; particle filter; support vector regression; visual tracking;
Conference_Titel :
Image Processing, 2005. ICIP 2005. IEEE International Conference on
Print_ISBN :
0-7803-9134-9
DOI :
10.1109/ICIP.2005.1530082