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Source: Pattern Recognition Letters, VOL. 27, Issue 13, October 2006

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Presentation on theme: "Source: Pattern Recognition Letters, VOL. 27, Issue 13, October 2006"— Presentation transcript:

1 Image segmentation by histogram thresholding using hierarchical cluster analysis
Source: Pattern Recognition Letters, VOL. 27, Issue 13, October 2006 Authors: Agus Zainal Arifin, Akira Asano Speaker: Pei-Yen Pai Date:

2 Outline Introduction Otsu’s method Proposed method Experiment results
Conclusions

3 Introduction Image segmentation thresholding Th1 Th2 Original image
Thresholded image Contour image

4 Otsu’s method The most common used thresholding method.
Simplicity and efficiency. Maximize between-class variance or Minimize within-class variance. Pci: The probability of i-th class. Mci: The mean of i-th class. M: The mean of image.

5 Drawback of Otsu’s method
Original image Thresholded image Contour image

6 The proposed method Histogram of the sample image
The obtained dendrogram

7 The proposed method Inter-class Intra-class Ck1 Ck2 Ck3 255 Gray-level

8 The proposed method Dist 1 Dist 2 Dist 3 2 3 4 5 150 200

9 The proposed method The pair of the smallest distance is Dist 2
150 200 2 3 4 5 Merge

10 The proposed method Dist A < Dist B Three groups Two groups Dist A
75 150 200 2 3 50

11 Experiment results Original images The histogram of Original images

12 Experiment results The thesholded images by proposed method
The thesholded images by Otsu’s method

13 Experiment results The thesholded images by KI’s method
The thesholded images by Kwon’s method

14 Experiment results The thesholded images by proposed method
The ground-truth of original images

15 Experiment results

16 Conclusions Present a new gray level thresholding algorithm.
The proposed thresholding method yields better images, than those obtained by the widely used Otsu’smethod, KI’s method, and Kwon’s


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