Nonlinear Least-Squares Time-Difference Estimation from Sub-Nyquist-Rate Samples
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概要
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In this paper, time-difference estimation of filtered random signals passed through multipath channels is discussed. First, we reformulate the approach based on innovation-rate sampling (IRS) to fit our random signal model, then use the IRS results to drive the nonlinear least-squares (NLS) minimization algorithm. This hybrid approach (referred to as the IRS-NLS method) provides consistent estimates even for cases with sub-Nyquist sampling assuming the use of compactly-supported sampling kernels that satisfies the recently-developed nonaliasing condition in the frequency domain. Numerical simulations show that the proposed NLS-IRS method can improve performance over the straight-forward IRS method, and provides approximately the same performance as the NLS method with reduced sampling rate, even for closely-spaced time delays. This enables, given a fixed observation time, significant reduction in the required number of samples, while maintaining the same level of estimation performance.
- 2012-07-01
著者
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HARADA Koji
Agilent Technologies
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HARADA Koji
Agilent Technologies, Ltd.
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SAKAI Hideaki
the Graduate School of Informatics, Kyoto University
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- Nonlinear Least-Squares Time-Difference Estimation from Sub-Nyquist-Rate Samples