Segmentation Results through FCM clustering with MATLAB program

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SEGMENTATION RESULTS THROUGH FCM CLUSTERING

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Notes

• The thresholding factor of FCM is varied and segmentation outputs are observed for different values of “Thresholding factor”.

• Jaccard index is calculated for each segmentation output with respect to the provided “Ground truth image”.

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Sample 1

GROUND TRUTH IMAGE

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FCM SEGMENTATION RESULTS

THRESHOLDING FACTOR U1(V)>0.4

JACCARD INDEX = 0.1362

THRESHOLDING FACTOR U1(V)>0.6

JACCARD INDEX=0.2859

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THRESHOLDING FACTOR U1(V)>0.8

THRESHOLDING FACTOR U1(V)>0.99

JACCARD INDEX=0.8350

JACCARD INDEX=0.2960

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SAMPLE 2

GROUND TRUTH IMAGE

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FCM SEGMENTATION RESULTS

THRESHOLDING FACTOR U1(V)>0.4

THRESHOLDING FACTOR U1(V)>0.6

JACCARD INDEX= 0.2498

JACCARD INDEX=0.2898

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THRESHOLDING FACTOR U1(V)>0.8

THRESHOLDING FACTOR U1(V)>0.99

JACCARD INDEX=0.5031

JACCARD INDEX=0.6309

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SAMPLE 3

GROUND TRUTH IMAGE

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FCM SEGMENTED RESULTS

THRESHOLDING FACTOR U1(V)>0.4

THRESHOLDING FACTOR U1(V)>0.6

JACCARD INDEX=0.3750

JACCARD INDEX=0.4443

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THRESHOLDING FACTOR U1(V)>0.8

THRESHOLDING FACTOR U1(V)>0.99

JACCARD INDEX=0.0929

JACCARD INDEX=0

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SAMPLE 4

GROUND TRUTH IMAGE

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FCM SEGMENTED RESULTS

THRESHOLDING FACTOR U1(V)>0.4

THRESHOLDING FACTOR U1(V)>0.6

JACCARD INDEX=0.3817

JACCARD INDEX=0.7398

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THRESHOLDING FACTOR U1(V)>0.8

THRESHOLDING FACTOR U1(V)>0.99

JACCARD INDEX=0.8120

JACCARD INDEX=0.1684

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SAMPLE 5

GROUND TRUTH IMAGE

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FCM SEGMENTED RESULTS

THRESHOLDING FACTOR U1(V)>0.4

THRESHOLDING FACTOR U1(V)>0.6

JACCARD INDEX=0.3801

JACCARD INDEX=0.7525

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THRESHOLDING FACTOR U1(V)>0.8

THRESHOLDING FACTOR U1(V)>0.99

JACCARD INDEX=0.6881

JACCARD INDEX=0.0298

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Program for Segmentation and Jaccard Index Calculation

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Program(continued)

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Observations

• The Ideal threshold value for best result is different for different sample images.

• The Image has few unwanted features like shadows, hair, other little impressions etc., which have appeared in our “Segmentation Outputs ”.

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Observations(continued)

• Preprocessing the image before segmenting it using FCM clustering algorithm is required to improve the Jaccard Index.

• The Jaccard Index is a better similarity measure compared to spatial overlap index as it compares only the white regions of the images i.e., see sample 3, result 4.

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