Resolvability of MUSIC Algorithm in Solving Multiple Dipole Biomagnetic Localization from Spatio-Temporal MCG Data
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概要
- 論文の詳細を見る
The MUSIC (MUltiple SIgnal Classification) algorithm is a recently proposed method in solving multiple dipole localization problem from spatio-temporal MCG (Magnetocardiography) data. In this paper the characteristics of the MUSIC algorithm were investigated. General formulas are presented for computing a lower bound on localization error for spherical current source dipole models with arbitrary sensor array geometry. Graphical error contours are presented for 127 sensors covering the upper hemisphere when 2 dipoles are assumed.
- 社団法人電子情報通信学会の論文
- 1997-07-26
著者
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Chen J.g.
Faculty Of Engineering University Of Tokushima
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NIKI N.
Faculty of Engineering, University of Tokushima
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NAKAYA Y.
Medical School, University of Tokushima
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NISHITANI H.
Medical School, University of Tokushima
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Kang Y.M.
MEC Laboratory, DAIKIN Industries, Limited
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Nishitani H.
Medical School Of Tokushima
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Kang Y.m.
Mec Laboratory Daikin Industries Limited
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Niki N.
Faculty Of Engineering University Of Tokushima
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Nishitani H.
Medical School University Of Tokushima
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Nakaya Y.
Medical School University Of Tokushima
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