TY - JOUR
T1 - Underwater acoustic localization by principal components analyses based probabilistic approach
AU - Lee, Kun Chou
AU - Ou, Jhih Sian
AU - Huang, Min Chih
N1 - Funding Information:
The authors would like to express their sincere gratitude to Prof. Tsung-Nan Lin, Department of Electrical Engineering and Graduate Institute of Communication, National Taiwan University, Taipei, Taiwan, for his helpful discussion. The work of this study was Granted by the National Science Council, Taiwan, under Grant NSC 96-2628-E-006-250-MY3.
PY - 2009/9
Y1 - 2009/9
N2 - In this paper, the underwater localization is given from wireless acoustic communication signals by probabilistic pattern recognition in eigenspace of PCA (principal components analyses). It should be emphasized that our underwater localization is from existing wireless acoustic communication signals, but not from additional localization systems. Our underwater localization scheme is based on fingerprinting and contains two stages, i.e., the off-line (i.e., training) and on-line (i.e., predicting) stages. In general, the received acoustic signals fluctuate seriously in underwater environments. To reduce the complexity and noise effects, all received signals are projected onto the eigenspace of PCA. Each projected feature is assumed to have Gaussian probabilistic distributions. Therefore, the location information can be easily obtained by probabilistic pattern recognition of projected features in PCA space. Note that our underwater localization scheme is not affected by reflected signals. To illustrate such a benefit, experiments were conducted in a bounded water pool where reflected signals exist near the walls. Experimental results show that the proposed underwater localization scheme is efficient and accurate. The proposed localization scheme is useful for underwater acoustic communication networks, and then in underwater technologies.
AB - In this paper, the underwater localization is given from wireless acoustic communication signals by probabilistic pattern recognition in eigenspace of PCA (principal components analyses). It should be emphasized that our underwater localization is from existing wireless acoustic communication signals, but not from additional localization systems. Our underwater localization scheme is based on fingerprinting and contains two stages, i.e., the off-line (i.e., training) and on-line (i.e., predicting) stages. In general, the received acoustic signals fluctuate seriously in underwater environments. To reduce the complexity and noise effects, all received signals are projected onto the eigenspace of PCA. Each projected feature is assumed to have Gaussian probabilistic distributions. Therefore, the location information can be easily obtained by probabilistic pattern recognition of projected features in PCA space. Note that our underwater localization scheme is not affected by reflected signals. To illustrate such a benefit, experiments were conducted in a bounded water pool where reflected signals exist near the walls. Experimental results show that the proposed underwater localization scheme is efficient and accurate. The proposed localization scheme is useful for underwater acoustic communication networks, and then in underwater technologies.
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U2 - 10.1016/j.apacoust.2009.04.008
DO - 10.1016/j.apacoust.2009.04.008
M3 - Article
AN - SCOPUS:65849168402
SN - 0003-682X
VL - 70
SP - 1168
EP - 1174
JO - Applied Acoustics
JF - Applied Acoustics
IS - 9
ER -