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Advanced signal processing Dr. Mohamad KAHLIL Islamic University of Lebanon

Advanced signal processing Dr. Mohamad KAHLIL Islamic University of Lebanon. Outline. Random variables Histogram, Mean, Variances, Moments, Correlation, types, multiple random variables Random functions Correlation, stationarity, spectral density estimation methods

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Advanced signal processing Dr. Mohamad KAHLIL Islamic University of Lebanon

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  1. Advanced signal processing Dr. Mohamad KAHLIL Islamic University of Lebanon

  2. Outline • Random variables • Histogram, Mean, Variances, Moments, Correlation, types, multiple random variables • Random functions • Correlation, stationarity, spectral density estimation methods • Signal modeling: AR, MA, ARMA, • Advanced applications on signal processing: • Time frequency and wavelet • Detection and classification in signals

  3. Marks • Partial : 20/100 • About April 29, 2008 • Lab advanced: 30/100 • Final exam: 50/100 • About June 25,2008

  4. Chapter 1: Random variables • Random variables • Probability • Histogram or probability density function • Cumulative function • Mean • Variance • Moments • Some representations of random variables • Bi-dimensional random variables • Marginal distributions • Independence • Correlations • Gaussian expression of multiple random variables • Changing random variables

  5. Introduction signal = every entity which contains some physical information Examples: Acoustic waves Music, speech, ... Electric current given by a microphone Light source (star, …) ... Light waves Current given by a spectrometer Number series Physical measurements ... Photography

  6. Signal processing = procedure used to:  extract the information (filtering, detection, estimation, spectral analysis...)  Adapt the signal (modulation, sampling….) (to transmit it or save it)  pattern recognition In physics: TS Physical system signal Analysis Transmission Detection  interpretation Noise source

  7. Exemples: Astronomy: Electromagnetic waves  information concerning stars • Sig. Process.: •  sampling • filtering •  spectrale analysis • ... signal V(t) Atmosphere  noise Transmitted light Signal processing:  Spectral analysis  Synchronous detection ... I(t) Light rays incident detector Sample test Periodic opening

  8. Classification of signals : Number of free variables. Dimensional classification : Examples : Electrical potential V(t) = Unidimensional signal Statistic image black and white  brightness B(x,y) = bi-dimensional signal Black and white film  B(x,y,t) = tri-dimensional signal ...  The signal theory is independent on the physic phenomenon and the types of variables. Phenomenological Classification Random or deterministic evolution Deterministic signal : temporal evolution can be predicted or modeled by an appropriate mathematical mode Random signal : the signal cannot be predicted statistical description  Every signal has a random component (external perturbation, …)

  9. Morphological classification: [Fig.2.10,(I)]

  10. Probability

  11. Probability If two events A and B occurs, P(B/A) is the conditional probability If A and B are independent, P(A,B)=P(A).P(B)

  12. Random variable and random process • Let us consider the random process : measure the temperature in a room • Many measurements can be taken simultaneously using different sensors (same sensors, same environments…) and give different signals z1 t t1 t2 z2 Signals obtained when measuring temperature using many sensors z3

  13. Random variable and random process • The random process is represented as a function • Each signal x(t), for each sensor, is a random signal. • At an instant t, all values at this time define a random variable z1 t t1 t2 z2 Signals obtained when measuring temperature using many sensors z3

  14. Probability density function (PDF) • The characteristics of a random process or a random variable can be interpreted from the histogram N(m, ti) = number of events: "xi = x +Dx" Precision of measurment N(m) x Nmes= total number of measurments (m+1)Dx m Dx

  15. PDF properties • Id Δx=dx (trop petit) so, the histogram becomes continuous. In this case we can write:

  16. Histogram or PDF • Sine wave : Random signal f(x) x -1 1 Uniform PDF

  17. Cumulative density function

  18. examples

  19. Expectation, variance Every function of a random variable is a random variable. If we know the probability distribution of a RV, we can deduce the expectation value of the function of a random variable: Statistical parameters : Average value : Mean quadratic value: Variance : Standard deviation :

  20. Moments of higher order • The definition of the moment of order r is: • The definition of the characteristic function is: We can demonstrate:

  21. Exponential random variable

  22. Uniform random variable f(x) c x a b

  23. Gaussian random variable

  24. f(x) a c b F(x) a c b x Triangular random variable

  25. f(x) a c b F(x) a c b x Triangular random variable

  26. Bi-dimensional random variable • Two random variables X and Y have a common probability density functions as : • (X,Y) fXY(x,y) is the probability density function of the couple (X,Y) • Example:

  27. Bi-dimensional Random variables • Cumulative functions: • Marginal cumulative distribution functions • Marginal probability density functions

  28. Bi-dimensional Random variables • Moments of a random variable X If X and Y are independents and in this case

  29. Covariance

  30. Covariance

  31. Correlation coefficient

  32. Correlation coefficient

  33. Correlation coefficient

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