DocumentCode :
3601449
Title :
Robust Multitask Multiview Tracking in Videos
Author :
Xue Mei ; Zhibin Hong ; Prokhorov, Danil ; Dacheng Tao
Author_Institution :
Toyota Res. Inst. North America, Ann Arbor, MI, USA
Volume :
26
Issue :
11
fYear :
2015
Firstpage :
2874
Lastpage :
2890
Abstract :
Various sparse-representation-based methods have been proposed to solve tracking problems, and most of them employ least squares (LSs) criteria to learn the sparse representation. In many tracking scenarios, traditional LS-based methods may not perform well owing to the presence of heavy-tailed noise. In this paper, we present a tracking approach using an approximate least absolute deviation (LAD)-based multitask multiview sparse learning method to enjoy robustness of LAD and take advantage of multiple types of visual features, such as intensity, color, and texture. The proposed method is integrated in a particle filter framework, where learning the sparse representation for each view of the single particle is regarded as an individual task. The underlying relationship between tasks across different views and different particles is jointly exploited in a unified robust multitask formulation based on LAD. In addition, to capture the frequently emerging outlier tasks, we decompose the representation matrix to two collaborative components that enable a more robust and accurate approximation. We show that the proposed formulation can be effectively approximated by Nesterov´s smoothing method and efficiently solved using the accelerated proximal gradient method. The presented tracker is implemented using four types of features and is tested on numerous synthetic sequences and real-world video sequences, including the CVPR2013 tracking benchmark and ALOV++ data set. Both the qualitative and quantitative results demonstrate the superior performance of the proposed approach compared with several state-of-the-art trackers.
Keywords :
gradient methods; image representation; image sequences; learning (artificial intelligence); least squares approximations; matrix algebra; object tracking; particle filtering (numerical methods); smoothing methods; video signal processing; ALOV++ data set; CVPR2013 tracking benchmark; LAD-based multitask multiview sparse learning method; Nesterov smoothing method; accelerated proximal gradient method; approximate least absolute deviation; heavy-tailed noise; least squares criteria; particle filter framework; real-world video sequences; representation matrix; robust multitask multiview tracking; sparse-representation-based methods; synthetic sequences; traditional LS-based methods; visual features; Dictionaries; Matrix decomposition; Noise; Robustness; Sparse matrices; Target tracking; Visualization; L1 minimization; least absolute deviation (LAD); multitask; multiview; sparse representation; tracking; tracking.;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2015.2399233
Filename :
7050359
Link To Document :
بازگشت