Open Access
Signal Parameter Estimation Using 1-Bit
Dithered Quantization
- 01 Jan 2006
2
TL;DR: This work considers the problem of estimation of a parameter of a signal corrupted by noise assuming that only 1-bit precision dithered quantized samples are available, and an estimate that does not require the knowledge of the dither signal and the noise distribution is proposed.
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Abstract: Motivated by the estimation of spatio-temporal events with cheap, simple sensors, we consider the problem of estimation of a parameter of a signal corrupted by noise assuming that only 1-bit precision dithered quantized samples are available. An estimate that does not require the knowledge of the dither signal and the noise distribution is proposed, and it is analyzed in detail under variety of nonidealities. The consistency and asymptotic normality of the estimate is established for deter- ministic and random sampling, imprecise knowledge of sampling locations, Gaussian and non-Gaussian noise (with possibly infinite variance), a wide class of dither distributions, and under erroneous transmission of the binary observations via binary-symmetric channels (BSCs). It is also shown that if approximation to the log-likelihood equation in the full precision case yields a good estimate, then there is a corresponding good estimate based on 1-bit dithered samples. The proposed estimate requires no more computation than the maximum-likelihood estimate for the full precision case and suffers only a logarithmic rate loss compared to the full precision case when uniform dithering is used. It is shown that uniform dithering leads to the best rate among a broad class of dither distributions. A condition under which no dithering leads to a better estimate is also given.
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Citations
The reconstruction of analog signals from the sign of their noisy samples
Elias Masry
- 01 Aug 1980
TL;DR: The reconstruction of a continuous-time signal s(t) from the sign of its (deliberately) contaminated samples is considered, and sequential, generally nonlinear estimates of s( t) are established and their performance is studied; error bounds and convergence rates are derived.
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References
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Digital Communications
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- 01 Jan 1983
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