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Fundamentals of estimation and detection in signals and images
Teaching team : Matthieu Boffety François Goudail
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Layout and objective of the course
1. Basics of estimation theory How extract information from a noisy signal in an optimal way ? 2. Basics of detection theory How choose between two hypotheses in an optimal way ? A few new mathematics But mainly a new way of seeing phyiscs …
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Organization of the course
Lectures : 5 slots (15h) Printed document « Introduction to estimation and detection theory » Books : Ph. Réfrégier, « Noise theory and application to physics » S. Kay, « Fundamentals of statistical signal processing », vol. I and II Lectures : blackboard + slides + exercises Labworks (Matlab) : 5 slots (15h) Signal processing is an experimental science ! Project (Matlab) : write a scientific paper !
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FED : Fundamentals of estimation and detection
IM3D : Images, mouvement, 3D PAI: Programmation pour les activités de l’ingénieur
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Evaluation Project : write a scientific paper (to be handed on 21/10)
1/3 of the final mark Project : write a scientific paper (to be handed on 21/10) Written examination (19/10, 2h, no documents) 1/3 of the final mark Labworks : on-site evaluation for all labworks reports (6 pages max) on labworks 2, 4 and 5 to be handed in and evaluated. 1/3 of the final mark
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I. Estimation theory 1. The problematic of estimation
2. Measuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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I. Estimation theory 1. The problematic of estimation
2. Measuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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1. The problematic of estimation
One observes a series of N measurements assumed to be produced by a random process. They are gathered in a set called a sample. Observed sample : deterministic vector Realization of Random sample : random vector Statistic : Likelihood :
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The likelihood i.i.d. sample :
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Estimation problem : example
Let us consider a i.i.d. sample with exponential PDF: Our objective is to estimate the parameter q. Propose a method ? The mean and the variance of an exponential random variable are : Solution 1: Solution 2: What is the better solution ? Need for a criterion to evaluate the quality of an estimator
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II. Estimation theory 1. The problematic of estimation
2. Measuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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Quality of an estimator
: True value of the parameter : estimator (statistic) Quality criterion : Mean Square Error MSE can also be written as: where:
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Pdf of Standard deviation of the estimator : sT
Bias of the estimator : bT
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Examples Example 1 : arithmetic mean (as an estimator of the mean)
unbiased Example 2 : empirical variance (as an estimator of the variance) biased Gaussian sample:
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Estimation problem : example
Let us consider a i.i.d. sample with exponential PDF: Our objective is to estimate the parameter q. Propose a method ? The mean and the variance of an exponential random variable are : Solution 1: Solution 2: What is the better estimator ?
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Pdf of two estimators Exponential sample, N=100, estimated parameter : mean True parameter : q0=1 Histograms estimated on 105 trials
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Examples Example 3 : histogram (as an estimate of the PDF) Estimate :
from the sample : Estimator : unbiased Bad estimation if Pk small
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II. Estimation theory 1. The problematic of estimation
2. Measuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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Moment estimator Assume that the sample has three parameters :
Consider the three first moments The solution of the following system is the moment estimator : Statistical moments Empirical moments Example 1 : Gaussian sample – q=(m,s)
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Moment estimator Assume that the sample has three parameters :
Consider the three first moments The solution of the following system is the moment estimator : Statistical moments Empirical moments Example 2 : Gamma sample - q=(m, L)
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Reduction of speckle noise
Spatial averaging of an image: I(i,j) = intensity backscattered at pixel (i,j) of the image. In the presence of speckle, I(i,j) is an exponential RV with mean <I>. Averaging on a region: Mean : Variance :
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Density of is the sum of NR exponential RV
What is its probability density ? -> Gamma density of order NR (L) L =1 L =10 As L increases, the probability density of the noise becomes « thinner » (the variance decreases), tends to a Gaussian (CLT) L =2
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Reduction of speckle noise
Gamma noise, L=9 P(I) I Raw image After spatial averaging on a 3x3 neighborhood P(I) I Exponential speckle
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Moment estimator Assume that the sample has three parameters :
Consider the three first moments Solution of the following system is the moment estimator : Statistical moments Empirical moments Example 2 : Gamma sample - q=(m, L) L =1 L =2 L =10
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II. Estimation theory 1. The problematic of estimation
2. Measuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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The likelihood i.i.d. sample :
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Example : i.i.d. Gaussian sample
Marginal PDF: Loglikelihood ?
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Maximum likelihood (ML) estimator
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Examples Example 1 : i.i.d. white Gaussian sample
For this estimation problem, the ML estimator is identical to the moment estimator
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Examples Example 2 : Gamma sample
The ML estimator of m is identical to the moment estimator The ML estimator of L is solution of the following equation: with: The ML estimator of L is different from the moment estimator
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Examples Example 3 : i.i.d. correlated Gaussian sample
Objective : estimate m and G
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II. Estimation theory 1. The problematic of estimation
2. Measuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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Cramèr-Rao lower bound
Example : i.i.d. exponential sample
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Small CRLB : good precision
Large CRLB : weak precision
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Asymptotic efficiency of the ML estimator
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Conditions of strict efficiency of the ML estimator
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II. Estimation theory 1. The problematic of estimation
2. Mesuring the quality of an estimator 3. Estimation methods Moment method Maximum likelihood estimator 4. Cramer-Rao Lower Bound – Efficiency of an estimator 5. Robust estimation
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Gaussian Cauchy a=0 5 realizations
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Gaussian Cauchy a=0.01 5 realizations
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Robust estimation Empirical mean Variance Médian
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