Content deleted Content added
Article use. |
|||
(41 intermediate revisions by 23 users not shown) | |||
Line 1:
{{Short description|Algorithm for analyzing noisy data streams}}
'''Maximum likelihood sequence estimation''' ('''MLSE''') is a [[mathematical algorithm]]
==Theory==
For an optimized detector for digital signals the priority is not to reconstruct the transmitter signal, but it should do a best estimation of the transmitted data with the least possible
▲E.g. [[root mean square deviation]] can be used as the decision criteria<ref>G. Bosco, P. Poggiolini, and M. Visintin, "Performance Analysis of MLSE Receivers Based on the Square-Root Metric," J. Lightwave Technol. 26, 2098-2109 (2008)</ref> for the lowest error probability.
==
Suppose that there is an underlying signal {''x''(''t'')}, of which an observed signal {''r''(''t'')} is available. The observed signal ''r'' is related to ''x'' via a transformation that may be nonlinear and may involve attenuation, and would usually involve the incorporation of [[random noise]]. The [[statistical parameter]]s of this transformation are assumed to be known. The problem to be solved is to use the observations {''r''(''t'')} to create a good estimate of {''x''(''t'')}.
Maximum likelihood sequence estimation is formally the application of [[maximum likelihood]] to this problem. That is, the estimate of {''x''(''t'')} is defined to be a sequence of values which maximize the functional
:<math>L(x)=p(r\mid x),</math>
where ''p''(''r'' | ''x'') denotes the conditional joint probability density function of the observed series {''r''(''t'')} given that the underlying series has the values {''x''(''t'')}.
In contrast, the related method of maximum a posteriori estimation is formally the application of the [[maximum a posteriori]] (MAP) estimation approach. This is more complex than maximum likelihood sequence estimation and requires a known distribution (in [[Bayesian inference|Bayesian terms]], a [[prior distribution]]) for the underlying signal. In this case the estimate of {''x''(''t'')} is defined to be a sequence of values which maximize the functional
:<math>P(x)=p(x\mid r),</math>
where ''p''(''x'' | ''r'') denotes the conditional joint probability density function of the underlying series {''x''(''t'')} given that the observed series has taken the values {''r''(''t'')}. [[Bayes' theorem]] implies that
:<math>P(x)=p(x\mid r)=\frac{p(r\mid x)p(x)}{p(r)}.</math>
In cases where the contribution of random noise is additive and has a [[multivariate normal distribution]], the problem of maximum likelihood sequence estimation can be reduced to that of a [[least squares]] minimization.
== Further reading ==▼
* {{cite book|title=Wireless Communications|author=Andrea Goldsmith|chapter=Maximum Likelihood Sequence Estimation|pages=362–364|pubisher=Cambridge University Press|date=2005|isbn=0521837162|isnb13=9780521837163}}▼
* {{cite book|pages=319–321|title=Fundamentals of DSL Technology|author=Philip Golden, Hervé Dedieu, Krista Jacobsen, and Peter Reusens|publisher=CRC Press|date=2006|isbn=0849319137|isnb13=9780849319136}}▼
==See also==
* [[Maximum
* [[Partial-response maximum-likelihood]]
==References==
{{More footnotes|date=September 2010}}
{{reflist}}
▲* {{
▲* {{
* Crivelli, D. E.; Carrer, H. S., Hueda, M. R. (2005) [http://www.scielo.org.ar/pdf/laar/v35n2/v35n2a04.pdf "Performance evaluation of maximum likelihood sequence estimation receivers in lightwave systems with optical amplifiers"], ''Latin American Applied Research'', 35 (2), 95–98.
* Katz, G., Sadot, D., Mahlab, U., and Levy, A.(2008) "Channel estimators for maximum-likelihood sequence estimation in direct-detection optical communications", ''Optical Engineering'' 47 (4), 045003. {{doi|10.1117/1.2904827}}
==External links==
* {{
{{DEFAULTSORT:Maximum Likelihood Sequence Estimation}}
[[Category:Estimation theory]]▼
[[Category:Telecommunications techniques]]
[[Category:Error detection and correction]]
|