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{{Nofootnotes|article|date=March 2009}}'''Statistical signal processing''' is an area of [[Applied Mathematics]] and [[Signal Processing]] that treats signals as [[stochastic process]]es, dealing with their statistical properties (e.g., [[mean]], [[covariance]], etc.). Because of its very broad range of application Statistical signal processing is taught at the graduate level in either [[Electrical Engineering]], [[Applied Mathematics]], [[Pure Mathematics]]/[[Statistics]], or even [[Biomedical Engineering]] and [[Physics]] departments around the world, although important applications exist in almost all scientific fields. | |||
In many areas signals are modeled as functions consisting of both deterministic and [[stochastic]] components. A simple example and also a common model of many statistical systems is a signal <math>y(t)</math> that consists of a deterministic part <math>x(t)</math> added to noise which can be modeled in many situations as white [[Gaussian noise]] <math>w(t)</math>: | |||
:<math>y(t) = x(t) + w(t) \, </math> | |||
where | |||
:<math>w(t) \sim \mathcal{N}(0,\sigma^2)</math> | |||
[[White noise]] simply means that the noise process is completely uncorrelated. As a result, its [[autocorrelation]] function is an [[Dirac delta function|impulse]]: | |||
:<math> R_{ww}(\tau) = \sigma^2 \delta(\tau) \, </math> | |||
where | |||
:<math>\delta(\tau) \, </math> is the [[Dirac delta function]]. | |||
Given information about a statistical system and the [[random variable]] from which it is derived, we can increase our knowledge of the output signal; conversely, given the statistical properties of the output signal, we can infer the properties of the underlying random variable. These statistical techniques are developed in the fields of [[estimation theory]], [[detection theory]], and numerous related fields that rely on statistical information to maximize their efficiency. | |||
For example, the Computation of Average Transients (CAT) is used routinely in FT-[[NMR spectroscopy]] ([[nuclear magnetic resonance]]) to improve the [[signal-noise ratio]] of nmr spectra. The signal is measured repeatedly n times and then averaged. | |||
: <math>\bar y = \frac{1}{n} \sum_i y(t)_i=x(t)+ \frac{1}{n} \sum_i w(t)_i</math> | |||
Assuming that the noise is white and that its variance is constant in time it follows by [[error propagation]] that | |||
:<math>\sigma(\bar y)= \frac{1}{\sqrt{n}}\sigma</math> | |||
Thus, if 10,000 measurements are averaged the signal to noise ratio is increased by a factor of 100, enabling the measurement of [[carbon|<sup>13</sup>C]] NMR spectra at natural abundance (1.1%) of <sup>13</sup>C. | |||
== See also == | |||
* [[Wiener filter]] | |||
* [[Kalman filter]] | |||
* [[Particle filter]] | |||
== Further reading == | |||
* {{cite book |first=Louis L. |last=Scharf |title=Statistical signal processing: detection, estimation, and time series analysis |publisher=[[Addison–Wesley]] |location=[[Boston]] |year=1991 |pages= |isbn=0-201-19038-9 |oclc=61160161}} | |||
* {{cite book|last=P Stoica|first=R Moses|title=SPECTRAL ANALYSIS OF SIGNALS|year=2005; Chinese Edition, 2007|publisher=Prentice Hall|location=NJ|url=http://user.it.uu.se/%7Eps/SAS-new.pdf}} | |||
* {{cite book |first=Steven M. |last=Kay |title=Fundamentals of Statistical Signal Processing |publisher=[[Prentice Hall]] |location=[[Upper Saddle River, New Jersey]] |year=1993 |pages= |isbn=0-13-345711-7 |oclc=26504848}} | |||
* Kainam Thomas Wong[http://www.eie.polyu.edu.hk/~enktwong/]: Statistical Signal Processing lecture notes at the University of Waterloo, Canada. | |||
* [[Ali H. Sayed]], Adaptive Filters, Wiley, NJ, 2008, ISBN 978-0-470-25388-5. | |||
* [[Thomas Kailath]], [[Ali H. Sayed]], and [[Babak Hassibi]], Linear Estimation, Prentice-Hall, NJ, 2000, ISBN 978-0-13-022464-4. | |||
{{DSP}} | |||
{{Signal-processing-stub}} | |||
{{stat-stub}} | |||
[[Category:Signal processing]] | |||
[[Category:Time series analysis]] |
Revision as of 09:48, 15 January 2014
Template:NofootnotesStatistical signal processing is an area of Applied Mathematics and Signal Processing that treats signals as stochastic processes, dealing with their statistical properties (e.g., mean, covariance, etc.). Because of its very broad range of application Statistical signal processing is taught at the graduate level in either Electrical Engineering, Applied Mathematics, Pure Mathematics/Statistics, or even Biomedical Engineering and Physics departments around the world, although important applications exist in almost all scientific fields.
In many areas signals are modeled as functions consisting of both deterministic and stochastic components. A simple example and also a common model of many statistical systems is a signal that consists of a deterministic part added to noise which can be modeled in many situations as white Gaussian noise :
where
White noise simply means that the noise process is completely uncorrelated. As a result, its autocorrelation function is an impulse:
where
- is the Dirac delta function.
Given information about a statistical system and the random variable from which it is derived, we can increase our knowledge of the output signal; conversely, given the statistical properties of the output signal, we can infer the properties of the underlying random variable. These statistical techniques are developed in the fields of estimation theory, detection theory, and numerous related fields that rely on statistical information to maximize their efficiency.
For example, the Computation of Average Transients (CAT) is used routinely in FT-NMR spectroscopy (nuclear magnetic resonance) to improve the signal-noise ratio of nmr spectra. The signal is measured repeatedly n times and then averaged.
Assuming that the noise is white and that its variance is constant in time it follows by error propagation that
Thus, if 10,000 measurements are averaged the signal to noise ratio is increased by a factor of 100, enabling the measurement of 13C NMR spectra at natural abundance (1.1%) of 13C.
See also
Further reading
- 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.
My blog: http://www.primaboinca.com/view_profile.php?userid=5889534 - 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.
My blog: http://www.primaboinca.com/view_profile.php?userid=5889534 - 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.
My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
- Kainam Thomas Wong[1]: Statistical Signal Processing lecture notes at the University of Waterloo, Canada.
- Ali H. Sayed, Adaptive Filters, Wiley, NJ, 2008, ISBN 978-0-470-25388-5.
- Thomas Kailath, Ali H. Sayed, and Babak Hassibi, Linear Estimation, Prentice-Hall, NJ, 2000, ISBN 978-0-13-022464-4.