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AUTOMATICA
2005
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AUTOMATICA 2005
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Subspace system identification for training-based MIMO channel estimation
15 years 2 months ago
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oodgeroo.ucsd.edu
The application of state-space-based subspace system identification methods to training-based estimation for quasi-static multiinput
Chengjin Zhang, Robert R. Bitmead
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AUTOMATICA 2005
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Channel Estimation
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Practical Mimo Channel
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Subspace-based Channel Estimation
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Added
15 Dec 2010
Updated
15 Dec 2010
Type
Journal
Year
2005
Where
AUTOMATICA
Authors
Chengjin Zhang, Robert R. Bitmead
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Researcher Info
AUTOMATICA 2010 Study Group
Computer Vision