Detection of anisotropy of friction surface images

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Computer Methods and Systems, 21-23.XI.2007, Krakow. Detection of anisotropy of friction surface images. Zbigniew Rudnicki, dr inż . , Marek Mruk, mgr. Introduction. Processes of friction and corresponding wear very often cause: changes of surface anisotropy . - PowerPoint PPT Presentation

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Detection of anisotropy of friction surface images

Zbigniew Rudnicki, dr inż., Marek Mruk, mgr

Computer Methods and Systems, 21-23.XI.2007, KrakowComputer Methods and Systems, 21-23.XI.2007, Krakow

2

Introduction

• Processes of friction and corresponding wear very often cause: changes of surface anisotropy.

• The paper describes application of computer image analysis for friction surface state inspection by: - measuring of surface image anisotropy

3

Changes of surface anisotropy

The wear process can cause:

– increase of anisotropy

or

– decrease of anisotropy

depending on initial state of surface.

4

Example 1. Decrease of anisotropy- caused by wear

5

Example 2. Increase of anisotropy- caused by wear of cross-hatch finished

surface of Perkins tractor machine cylinder

6

The Goal of research

Verification of usability of some image features - which are often used in gray texture image analysis - for measuring of the anisotropy and directionality in friction surface images

7

Anisotropy of image feature. Definitions:

• The investigated feature C possesses an anisotropy when the values of this feature depends relevantly on the scanning angle (or image rotation angle -):

C(const• The anisotropy measure An(C) of the feature C(

is defined as: An(C) = 1 - min(C() / max(C()

8

The main direction of image feature

• If the function C( has the global maximum for angle so this angle designates the main direction of this feature and the image possesses directionality on account of the feature C

• If more than one local maximum of C( is significant - so more than one direction can be taken into consideration.

9

The main steps of the research:

A) Investigation of selected image featureson the base of several pattern images,for working out the best method of detection and measuringof anisotropy and directionality

B) Measuring of anisotropy and directionality for some classes of real images- as the test of proposed method.

10

Subtopics in step A:

Selecting the feature which is the most sensitive on image anisotropy

Defining: the measure of image anisotropy for selected feature, and the main direction of image

Feature standarization to range [0; 1] and to make independence on image size

Working out computer programs for:– Inspection (by graphs) of feature dependence

on skanning angle

– Measurement of anisotropy

– Measurement or main direction and the second direction (if exists)

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A) Tested pattern images. and rotation of image

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Skanning angle and rotation of images

The skanning angle was: 0o for all features which were extracted.

For evaluation C() - instead of changing the sequence of image rotations by angle was applied: = 0o, -5 o, -10 o, ..., -180o.

So the result was the same as for:0o, 5 o, 10 o, ..., 180o

13

Features from: “Run Length Matrix” R

All investigated features were calculated from:Run Length Matrix: R

Matrix R is obtained for given scanning angle The value of matrix element Rg,j gives information:

- how many “runs” of length j and gray level gthere were in the image.

The size of matrix R are Lg x Lr where: Lr - maximal length of run (in pixels)

Lg - number of gray levels.

14

The features calculating from matrix R:

(1) Short Run Emphasis inverse moment„Odwrotny moment uwydatnienia krótkich pasm”

(2) Long Run Emphasis moment “Moment uwydatnienia długich pasm”

(3) Run Length Nonuniformity“Niejednorodność pasm”

(4) Fraction of image in runs „Część obrazu w pasmach”

15

The features calculating from matrix R:

1

0 12

Ng

g

Nr

j

j,g c/)j

R(SRE

1

0 1

2Ng

g

Nr

jj,g c/)Rj(LngREmph

Nr

j

Ng

gj,g c/))R((RLNonUni

1 0

2

1

0 1

Ng

g

Nr

jj,g )Rj/(cFIR

(1)

(2)

(3)

(4)

where: Lk = number of columns in image (or pixels in row),N = number of all pixels,

1

0 1

Ng

g

Nr

jj,gRc

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Feature standarization - to range [0;1](gives independence on image size)

Only the features LngRemph and RLNonUni need standarization :

21

0 1

22 Lk/c/)Rj(Lk/mphReLngLRENg

g

Nr

jj,g

N/c/))R((N/RLNonUniRLNNr

j

Ng

gj,g

1 0

2

(2a)

(3a)

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Redefinition of investigated features

Only the feature LRE has maximum for main direction of texture and other features has minimum for this direction so they was redefined.

Finally - the four investigated features were:

C1() = 1-SRE(),

C2() = LRE(),

C3() = 1-RLN(),

C4() = 1-FIR().

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The results for pattern image 1:

255 gray levels

19

The results for pattern image 2:

Only 3 gray levels:0, 120, 240

20

The results for pattern image 3:

Beforecorrection

Aftercorrection

21

The results for real images (1):

„New”

„Wear”

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Image feature LRE anisotropyfor 2 classes of images (1)

Zmiany anizotropii obrazów powierzchni

0

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1 2 3 4Nr obrazu

An

izo

tro

pia

Pow. nowa

Pow. zarysowana

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The results for real images (2):

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Image feature LRE anisotropyfor 2 classes of images (2)

surfaces of Perkins machine cylinders:

Zmiany powierzchni cylindrów Perkins

0

0.1

0.2

0.3

0.4

0.5

0.6

1 2 3 4

Nr obrazu

An

izo

tro

pia Pow. nowa

Pow. zużyta

25

LRE discrimination ability - Fisher’s coefficient:

7222

21

212 .VV

)(

V

DFc

Where:

- mean

V - variance

26

Summary

• The feature: Long Run Emphasis Moment was standarized - as LRE - and selected as the best feature for measurement of image anisotropy

• The measure of anisotropy on the basis of this feature was defined

• Many computer programs in Matlab were worked out for analysis of anisotropy (as function of scanning angle) and evaluation of image directionality

• These programs were applied with success not only for pattern images but to some classes of real images too.

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Thank you for

attention !