z-logo
open-access-imgOpen Access
Segmentation of dermatoscopic images by frequency domain filtering and k‐means clustering algorithms
Author(s) -
Rajab Maher I.
Publication year - 2011
Publication title -
skin research and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.521
H-Index - 69
eISSN - 1600-0846
pISSN - 0909-752X
DOI - 10.1111/j.1600-0846.2011.00520.x
Subject(s) - artificial intelligence , segmentation , thresholding , cluster analysis , pattern recognition (psychology) , computer science , scale space segmentation , fuzzy clustering , segmentation based object categorization , image segmentation , noise (video) , fuzzy logic , image processing , computer vision , image (mathematics)
Background/Purpose: Since the introduction of epiluminescence microscopy (ELM), image analysis tools have been extended to the field of dermatology, in an attempt to algorithmically reproduce clinical evaluation. Accurate image segmentation of skin lesions is one of the key steps for useful, early and non‐invasive diagnosis of coetaneous melanomas. Methods: This paper proposes two image segmentation algorithms based on frequency domain processing and k‐means clustering/fuzzy k‐means clustering. The two methods are capable of segmenting and extracting the true border that reveals the global structure irregularity (indentations and protrusions), which may suggest excessive cell growth or regression of a melanoma. As a pre‐processing step, Fourier low‐pass filtering is applied to reduce the surrounding noise in a skin lesion image. Results: A quantitative comparison of the techniques is enabled by the use of synthetic skin lesion images that model lesions covered with hair to which Gaussian noise is added. The proposed techniques are also compared with an established optimal‐based thresholding skin‐segmentation method. It is demonstrated that for lesions with a range of different border irregularity properties, the k‐means clustering and fuzzy k‐means clustering segmentation methods provide the best performance over a range of signal to noise ratios. The proposed segmentation techniques are also demonstrated to have similar performance when tested on real skin lesions representing high‐resolution ELM images. Conclusion: This study suggests that the segmentation results obtained using a combination of low‐pass frequency filtering and k‐means or fuzzy k‐means clustering are superior to the result that would be obtained by using k‐means or fuzzy k‐means clustering segmentation methods alone.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here