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Image Analysis of HMA to Characterize the Aggregate ...

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Asphalt Research Consortium Partner Image Analysis of HMA to Characterize the Aggregate Orientation Kyoungchul Kim and Carl Johnson Dept. of Civil & Environmental Engineering
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Page 1: Image Analysis of HMA to Characterize the Aggregate ...

Asphalt Research Consortium Partner

Image Analysis of HMA to Characterize the Aggregate Orientation

Kyoungchul Kim and Carl JohnsonDept. of Civil & Environmental

Engineering

Page 2: Image Analysis of HMA to Characterize the Aggregate ...

ARCProgram Comparisons

Target Area Detection

Aggregates are uniformly distributed

Smaller than 1mm size aggregate can not be detected

Assumption:Gagg=2.5-2.7Gab=1.05-1.08Air Voids=8%Height=108 mm

Target AreaMaximum:67.4%Minimum:64.2%

Page 3: Image Analysis of HMA to Characterize the Aggregate ...

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Procedures of KCKIM (1) Image Loading From Data Folder

Input Image File Name and Click Open Image

An mage for processing must be in data folder

Page 4: Image Analysis of HMA to Characterize the Aggregate ...

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Procedure of KCKIM (2) Selection of Region of Image for the Processing

Input X and Y, Width and Height for the Interest Region of Image

Click Preview

Page 5: Image Analysis of HMA to Characterize the Aggregate ...

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Procedure of KCKIM (3)Zoom In Selection Region

Click Zoom In

Image applied with Equalization, Stretching, Smoothing, and Filtering

Page 6: Image Analysis of HMA to Characterize the Aggregate ...

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Procedure of KCKIM (4)Analysis and Labeling

Input Size of aggregate and Click Result

In the Results Folder,

Analysis Data (Text File) and Processing Images of Each Step (JPEG File)

are Stored

Processing Techniques

1.Edge Detection, 2.Thresholding

3.Region Growing

4.Erosion and Dilation 5.Opening and Closing

6.Spliting

7.Labeling

8.Data Stored

Page 7: Image Analysis of HMA to Characterize the Aggregate ...

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Image Processing from Image Pro

Raw Image Processed with density indexMastic: ≤164

Aggregate: >164

Fine Image Processing

Using Image-Pro software

Page 8: Image Analysis of HMA to Characterize the Aggregate ...

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(1)Thresholded Image

Using Image-Pro software From KCKIM

1st Threshold=0.65 and Region Growing

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Using Image-Pro software From KCKIM

Aggregate Area Detection=50.38% Aggregate Area Detection=55.28%

1st Threshold=0.65 and Region Growing

(2)Final Segmented Image

Page 10: Image Analysis of HMA to Characterize the Aggregate ...

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From KCKIM

Aggregate Area Detection=56.01% Aggregate Area Detection=57.14%

1st Threshold=0.75 and Region Growing

(2)Final Segmented Image

1st Threshold=0.70 and Region Growing

From KCKIM

Page 11: Image Analysis of HMA to Characterize the Aggregate ...

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N=200 Mixture

Original Image after Equalization

From KCKIM

Threshold Image

Page 12: Image Analysis of HMA to Characterize the Aggregate ...

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N=200 Mixture

Final Image

From KCKIM

Labeling and Analysis

Area Detection=58.26%

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N=200 MixtureAggregate Orientation

From KCKIM

Page 14: Image Analysis of HMA to Characterize the Aggregate ...

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Internal Structure Analysis Using Image Analysis Technique� The direction distribution of aggregate orientation

approximated by harmonic series expansion (Masad 1998)

� Absolute average angle of orientation θ, orientations of aggregates

� Vector magnitude Δ, Complete random distribution of the orientation=0%, Exactly the same direction=100%

)sincossin2cos1()(2

22

2

2 iiiiaiABAnn θθθθθ −++=

θ =θ

k∑N

∑ ∑+=∆22

)2cos()2sin(100

kk

Nθθ

Page 15: Image Analysis of HMA to Characterize the Aggregate ...

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Proposed Internal Structure InterpretationIn the Image Processing

� N is the number of aggregates with a diameter larger than 1.18mm in the image. XK is either the largest length (LK) or the area (AK) of each aggregate object in the image.

� Vector magnitudes, the value of ΔN, ΔL, and ΔA, varies from zero to one. Complete random distribution of the orientation will give a vector magnitude of zero

N

k∑=

θθ ∑ ∑+=∆

22)2cos()2sin(

100kkN

Nθθ

∑ ∑+=∆

K

KKKK

AorL

X

XX22

,

)2cos()2sin( θθ

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Comparison of N=30 and N=200

0.00

0.05

0.10

0.15

0.20

0.25

0.30

0 2 4 6 8 10> Aggregate Size> Aggregate Size> Aggregate Size> Aggregate Size

(standard sieve size)( standard sieve size)( standard sieve size)( standard sieve size)

Del

ta N

Del

ta N

Del

ta N

Del

ta N

N=30

N=200

0.00

0.05

0.10

0.15

0.20

0.25

0.30

0 2 4 6 8 10> Aggregate Size> Aggregate Size> Aggregate Size> Aggregate Size

(standard sieve size)(standard sieve size)(standard sieve size)(standard sieve size)

Del

ta L

Del

ta L

Del

ta L

Del

ta L

N=30

N=200

Aggregate Orientation

From KCKIM

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Comparison of N=30 and N=200

0.00

0.05

0.10

0.15

0.20

0.25

0 2 4 6 8 10> Aggregate Size> Aggregate Size> Aggregate Size> Aggregate Size

(standard sieve size)(standard sieve size)(standard sieve size)(standard sieve size)

Del

ta A

Del

ta A

Del

ta A

Del

ta A

N=30

N=200

Aggregate Orientation

From KCKIM


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