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Image Segmentation A Hybrid Method Using Clustering

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Supervisor: Dr Sid Ray. Overview. Image segmentation. Research Context. Image ... Ray and Turi's automatic determination of K in colour image segmentation. ... Ray. ... – PowerPoint PPT presentation

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Title: Image Segmentation A Hybrid Method Using Clustering


1
Image SegmentationA Hybrid Method Using
Clustering Region Growing
  • Interim Presentation
  • By Timothy Liao
  • Supervisor Dr Sid Ray

2
Overview
  • Image segmentation
  • Research Context
  • Image Segmentation Methods
  • Clustering and Region Merging
  • Implementation
  • Conclusion

3
Image Segmentation
  • What is it?
  • First step in image analysis
  • Partitioning of an image into non-overlapping
    regions.
  • What is it used for?
  • Detection of cancerous cells from medical images
  • Detection of Roads from satellite images

4
Research Context
  • Many Image Segmentation techniques.
  • These techniques only work on certain images.
  • Hybrid method, combining clustering and region
    merging.

5
Image Segmentation Methods
  • Most image segmentation methods can be placed in
  • one of three classes
  • Characteristic feature thresholding or clustering
    (Feature Domain)
  • Boundary detection (Spatial Domain)
  • Region growing (Spatial Domain)

6
Clustering and Region Merging
  • Clustering
  • K-means Clustering
  • ISODATA
  • Fuzzy K-Means
  • Region Merging
  • Region Growing
  • Split and Merge

7
K-Means Clustering
  • K-means Clustering is Most common method used in
    unsupervised clustering.
  • Prior knowledge of K is needed.
  • Algorithm
  • Select K different grey level values from pixels
    in an image.
  • While K mean values ! previous k mean value
  • do
  • assign each pixel that has the closest grey
    level value to the k mean value.
  • work out the new mean values for each k.
  • end

8
Clustering of Grey Level Images
Original Image
K3
K2
We pick a K value to a apply to the image
depending on the analyser of the image.
9
Automatic Determination of K
  • Ray and Turis automatic determination of K in
    colour image segmentation. (R.Tury, S.Ray 1998).
  • Automatic determination of K for grey level
    images will be implemented in this research.

10
Region Merging
  • Find Seed values within the image
  • Merge pixels with similar grey level values
    together

Seeds
11
Region Merging
  • Noise Removal
  • Looking at spatial information to decide whether
    to merge a noise with the current region.

noise
12
Implementation
  • Using C
  • Using Monash Image Library
  • Synthetic Images
  • Natural Images

13
Conclusion
  • Hybrid Image Segmentation technique should
    perform better than common techniques.

14
References
  • R.H. Turi and S. Ray. K-means clustering for
    colour image segmentation with automatic
    detection of k. In Proceedings of Internation
    Conference on Sigmal and image Processing, pages
    345349, Las Vegas, Nevada, USA, 1998.
  • M.R. Anderberg. Cluster Analysis for Application.
    New York Academic Press, 1973.
  • J.T Tou and R.C. Gonzalez. Pattern Recognition
    Principles. Addison-Wesley., Massachusetts, USA,
    1974.
  • E.W. Forgy. Cluster analysis of multivariate
    data eciency vs. interpretability of
    classifications. abstract, Biometrics,,
    21768769, 2000.
  • J. MacQueen. Some methods for classification and
    analysis of multivariate observations. pages
    281279. Proceedings of Fifth Berkeley symposium
    on Mathematical Statistics and Probability, 1967.
  • G. Coleman and H.C. Andrews. Image segmentation
    and clustering. pages 773785. Proc, IEEE, 1979.
  • R E. Woods R C. Gonzalez. Digital Image
    Processing. Addison-Wesley, 1992.

15
Thank You
  • Are there any questions or comments?
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