Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor
Acoustic vector sensor (AVS) measures acoustic pressure as well as particle velocity, and therefore AVS signal contains 2-D (azimuth and elevation) DOA information of an acoustic source. Existing DOA estimation techniques assume that the source is static and extensively rely on the localization meth...
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sg-ntu-dr.10356-960532020-05-28T07:18:28Z Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor Premkumar, A. B. Madhukumar, A. S. Zhong, Xionghu School of Computer Engineering DRNTU::Engineering::Computer science and engineering Acoustic vector sensor (AVS) measures acoustic pressure as well as particle velocity, and therefore AVS signal contains 2-D (azimuth and elevation) DOA information of an acoustic source. Existing DOA estimation techniques assume that the source is static and extensively rely on the localization methods. In this paper, a particle filtering (PF) tracking approach is developed to estimate the 2-D DOA from signals collected by an AVS. A constant velocity model is employed to model the source dynamics and the likelihood function is derived based on a maximum likelihood estimation of the source amplitude and the noise variance. The posterior Cramér-Rao bound (PCRB) is also derived to provide a lower performance bound for AVS signal based tracking problem. Since PCRB incorporates the information from the source dynamics and measurement models, it is usually lower than traditional Cramér-Rao bound which only employs measurement model information. Experiments show that the proposed PF tracking algorithm significantly outperforms Capon beamforming based localization method and is much closer to the PCRB even in a challenging environment (e.g., SNR = -10 dB). 2013-07-11T07:45:33Z 2019-12-06T19:24:55Z 2013-07-11T07:45:33Z 2019-12-06T19:24:55Z 2011 2011 Journal Article Zhong, X., Premkumar, A. B., Madhukumar, A. S. (2011). Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor. IEEE Sensors Journal, 12(2), 363-377. https://hdl.handle.net/10356/96053 http://hdl.handle.net/10220/11225 10.1109/JSEN.2011.2168204 en IEEE sensors journal © 2011 IEEE. |
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DRNTU::Engineering::Computer science and engineering Premkumar, A. B. Madhukumar, A. S. Zhong, Xionghu Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor |
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Acoustic vector sensor (AVS) measures acoustic pressure as well as particle velocity, and therefore AVS signal contains 2-D (azimuth and elevation) DOA information of an acoustic source. Existing DOA estimation techniques assume that the source is static and extensively rely on the localization methods. In this paper, a particle filtering (PF) tracking approach is developed to estimate the 2-D DOA from signals collected by an AVS. A constant velocity model is employed to model the source dynamics and the likelihood function is derived based on a maximum likelihood estimation of the source amplitude and the noise variance. The posterior Cramér-Rao bound (PCRB) is also derived to provide a lower performance bound for AVS signal based tracking problem. Since PCRB incorporates the information from the source dynamics and measurement models, it is usually lower than traditional Cramér-Rao bound which only employs measurement model information. Experiments show that the proposed PF tracking algorithm significantly outperforms Capon beamforming based localization method and is much closer to the PCRB even in a challenging environment (e.g., SNR = -10 dB). |
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School of Computer Engineering |
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School of Computer Engineering Premkumar, A. B. Madhukumar, A. S. Zhong, Xionghu |
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Premkumar, A. B. Madhukumar, A. S. Zhong, Xionghu |
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Premkumar, A. B. |
title |
Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor |
title_short |
Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor |
title_full |
Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor |
title_fullStr |
Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor |
title_full_unstemmed |
Particle filtering and posterior Cramér-Rao bound for 2-D direction of arrival tracking using an acoustic vector sensor |
title_sort |
particle filtering and posterior cramér-rao bound for 2-d direction of arrival tracking using an acoustic vector sensor |
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2013 |
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https://hdl.handle.net/10356/96053 http://hdl.handle.net/10220/11225 |
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1681058539218403328 |