Frontiers in Signal Processing
RLS Wiener FIR Predictor and Filter Based on Innovation Approach in Linear Discrete-Time Stochastic Systems
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Author(s)
- Seiichi Nakamori*
Specially Appointed Professor, Department of Technology, Faculty of Education, Kagoshima University, Kourimoto, Kagoshima, 890-0065 Japan
Abstract
Keywords
References
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