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FILTRATION AND RESTORATION OF SATELLITE IMAGES USING DOUBLY STOCHASTIC RANDOM FIELDS Professor, Doctor of Engineering Konstantin Vasiliev, PhD, Assistant Professor Vitaliy Dementiev, and PhD Student Nikita Andriyanov Ulyanovsk State Technical (Russia)

Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

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Page 1: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

FILTRATION AND RESTORATION OF SATELLITE IMAGES USING DOUBLY STOCHASTIC RANDOM FIELDS

Professor, Doctor of Engineering Konstantin Vasiliev,

PhD, Assistant ProfessorVitaliy Dementiev,and PhD Student Nikita Andriyanov

Ulyanovsk State Technical (Russia)

Page 2: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

RELEVANCE

2

Page 3: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

PROBLEM

3

Page 4: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

SOLUTIONS

4

IMAGE RESTORATION

FILTERING

???MODELLING

SINGULAR VALUE DECOMPOSITION OF MATRICES WITH GAPS

KOHONEN MAPS

Page 5: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

GOAL AND TASKS

5

.

Page 6: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

DOUBLY STOCHASTIC MODEL

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Consider the following modification of a doubly stochastic model

where is the random field of correlation parameters by the row; is the random field of correlation parameters by the column; is the random field of independent Gaussian random values with and ; is the base random field dispersion.

ijjiijijjiijjiijij xxxx 11211211 ,,,

ij1 ij2 ij

0 mM ij

))(( 22

21

222 11 ijijxijijM 2x

Page 7: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

IMAGES FITTING

7

a) b) c)

Page 8: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

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PARAMETERS ESTIMATION USING SLIDING WINDOW

Page 9: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

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EXAMPLES OF IMAGE RESTORATION

Restoration of the area of the image on the border of two dissimilar surfaces

Page 10: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

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EXAMPLES OF IMAGE RESTORATION

Restoration of the image area close to uniform

Page 11: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

EXAMPLES OF IMAGE RESTORATION

Restoration of the image area limited by different structures

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Page 12: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

RESTORATION DURING FILTRATION

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We carry out a similar study, when to estimate the parameters of a doubly stochastic model we use the Kalman filter. To filter flat images we will use vector (interline) nonlinear Kalman filter. To do this, combine the elements of the image into a vector line . Then the model image can be written as

TiNiii xxxx ,,, 21

iyixiixii xdiagx ,)( 1 xixixxxi r )1(1 yiyiyyyi r )1(1

xiN

xi

xi

xidiag

0......

...0

......0...0...

0...

)( 2

1

In this progressive evaluation process can be described by the known nonlinear Kalman filter equations:

эpiinpi

T

iэpipi xzVx

Pxx ˆˆˆ 1

Page 13: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

PSEUDOGRADIENT SEARCH

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)ˆ,((ˆˆ 1111 tttttt ZJ

Pseudogradient estimation procedure will be carried out in accordance with the following general expression

where is vector of parameters to estimate; t is an iteration number; is the approximation matrix; is the pseudogradient of objective function J, that characterizes the quality of estimation; Zt is the local sample of observations using at t-th iteration.

1111111111 2khgfedcba

xzij )ˆ(min}~{

2222222222 2khgfedcba

xzij )ˆ(min}~{

Thus, we select the coefficients by minimizing each of the possible directions of joint changes

Page 14: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

PSEUDOGRADIENT AGAINST SLIDING WINDOW

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Page 15: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

THE RESTORATION

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Page 16: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

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CONCLUSION- we have synthesized image reconstruction algorithms based on models with a complex structure;-we have obtained the gain in comparison with the AR models (from 1.5 to 6 times depending on the image type);-we have suggested combine using of the pseudogradient search procedures and Kalman filter for image restoration;-processing of various images has been investigated. Doubly stochastic models provides gain to 5 times compared with the AR models.

Page 17: Filtration and Restoration of Satellite Images Using Doubly Stochastic Random Fields

THANK YOU FOR YOUR ATTENTION!

Nikita Andriyanov,Ulyanovsk State Technical University (Russia)

email: [email protected]