A novel computationally efficient SMC-PHD Filter using particle-measurement partition

The probability hypothesis density (PHD) filter is widely used to solve multi-target tracking (MTT) problems. Although the Sequential Monte Carlo (SMC) implementation provides a tractable solution for PHD filter to handle the highly nonlinear and non-Gaussian MTT scenario, the high computational cost caused by a large number of particles limits the applications that need to be performed in real-time. This paper proposes a computationally efficient SMC-PHD filter using particle-measurement partition and intermediate region strategy. Firstly, the partition strategy provides a way to solve the related PHD calculation in each partition independently. Secondly, based on the rectangular gating technique, the particle intermediate region strategy ensures the estimation accuracy of the proposed method. The simulation results indicate that the partition strategy significantly reduces the computational complexity of the SMC-PHD filter. In addition, the proposed method can maintain comparable accuracy as the standard SMC-PHD filter via the intermediate region strategy.

[1]  Isabelle Bloch,et al.  Multiple Hypothesis Tracking for Cluttered Biological Image Sequences , 2013, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[2]  Lin Wang,et al.  Simplified Particle PHD Filter for Multiple-Target Tracking: Algorithm and Architecture , 2011 .

[3]  Mubarak Shah,et al.  Multiframe Many–Many Point Correspondence for Vehicle Tracking in High Density Wide Area Aerial Videos , 2013, International Journal of Computer Vision.

[4]  Jesse Read,et al.  A distributed particle filter for nonlinear tracking in wireless sensor networks , 2014, Signal Process..

[5]  Tiancheng Li,et al.  High-speed Sigma-gating SMC-PHD filter , 2013, Signal Process..

[6]  Andrea Cavallaro,et al.  Multi-target tracking on confidence maps: An application to people tracking , 2013, Comput. Vis. Image Underst..

[7]  Thiagalingam Kirubarajan,et al.  Estimation with Applications to Tracking and Navigation , 2001 .

[8]  S.S. Blackman,et al.  Multiple hypothesis tracking for multiple target tracking , 2004, IEEE Aerospace and Electronic Systems Magazine.

[9]  Yaakov Bar-Shalom,et al.  Sonar tracking of multiple targets using joint probabilistic data association , 1983 .

[10]  Xiaohong Su,et al.  A new multi-target state estimation algorithm for PHD particle filter , 2010, 2010 13th International Conference on Information Fusion.

[11]  R. Mahler Multitarget Bayes filtering via first-order multitarget moments , 2003 .

[12]  Xuemin Shen,et al.  An Efficient Data-Driven Particle PHD Filter for Multitarget Tracking , 2013, IEEE Transactions on Industrial Informatics.

[13]  A. Doucet,et al.  Sequential Monte Carlo methods for multitarget filtering with random finite sets , 2005, IEEE Transactions on Aerospace and Electronic Systems.

[14]  Xiaomeng Bian,et al.  THRESHOLD-BASED RESAMPLING FOR HIGH-SPEED PARTICLE PHD FILTER , 2013 .

[15]  Ba-Ngu Vo,et al.  The Gaussian Mixture Probability Hypothesis Density Filter , 2006, IEEE Transactions on Signal Processing.

[16]  Patrick Pérez,et al.  Sequential Monte Carlo methods for multiple target tracking and data fusion , 2002, IEEE Trans. Signal Process..

[17]  Ba-Ngu Vo,et al.  On performance evaluation of multi-object filters , 2008, 2008 11th International Conference on Information Fusion.

[18]  Ba-Ngu Vo,et al.  A Consistent Metric for Performance Evaluation of Multi-Object Filters , 2008, IEEE Transactions on Signal Processing.