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Statistics / Mathematics / Mathematical analysis / Linear filters / Linear algebra / Signal processing / Kalman filter / Robot control / Compressed sensing / Background subtraction / Robust principal component analysis / Normal distribution
Date: 2016-06-07 10:57:34
Statistics
Mathematics
Mathematical analysis
Linear filters
Linear algebra
Signal processing
Kalman filter
Robot control
Compressed sensing
Background subtraction
Robust principal component analysis
Normal distribution

IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 64, NO. 14, JULY 15, Adaptive-Rate Reconstruction of Time-Varying Signals With Application in Compressive

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