Automatic segmentation of skin lesions in clinical images is a very challenging task; it is necessary for visual analysis of the edges, shape and colors of the lesions to support the melanoma diagnosis, but, at the same time, it is cumbersome since lesions (both naevi and melanomas) do not have regular shape, uniform color, or univocal structure. Most of the approaches adopt unsupervised color clustering. This works compares the most spread color clustering algorithms, namely median cut, k-means, fuzzy-c means and mean shift applied to a method for automatic border extraction, providing an evaluation of the upper bound in accuracy that can be reached with these approaches. Different tests have been performed to examine the influence of the choice of the parameter settings with respect to the performances of the algorithms. Then a new supervised learning phase is proposed to select the best number of clusters and to segment the lesion automatically. Examples have been carried out in a large database of medical images, manually segmented by dermatologists. From these experiments mean shift was resulted the best technique, in term of sensitivity and specificity. Finally, a qualitative evaluation of the goodness of segmentation has been validated by the human experts too, confirming the results of the quantitative comparison.

Comparison of color clustering algorithms for segmentation of dermatological images / Melli, Rudy Mirko; Grana, Costantino; Cucchiara, Rita. - STAMPA. - 6144:(2006), pp. 3S1-3S9. (Intervento presentato al convegno Medical Imaging 2006: Image Processing tenutosi a San Diego, CA, usa nel Feb 13-16) [10.1117/12.652061].

Comparison of color clustering algorithms for segmentation of dermatological images

MELLI, Rudy Mirko;GRANA, Costantino;CUCCHIARA, Rita
2006

Abstract

Automatic segmentation of skin lesions in clinical images is a very challenging task; it is necessary for visual analysis of the edges, shape and colors of the lesions to support the melanoma diagnosis, but, at the same time, it is cumbersome since lesions (both naevi and melanomas) do not have regular shape, uniform color, or univocal structure. Most of the approaches adopt unsupervised color clustering. This works compares the most spread color clustering algorithms, namely median cut, k-means, fuzzy-c means and mean shift applied to a method for automatic border extraction, providing an evaluation of the upper bound in accuracy that can be reached with these approaches. Different tests have been performed to examine the influence of the choice of the parameter settings with respect to the performances of the algorithms. Then a new supervised learning phase is proposed to select the best number of clusters and to segment the lesion automatically. Examples have been carried out in a large database of medical images, manually segmented by dermatologists. From these experiments mean shift was resulted the best technique, in term of sensitivity and specificity. Finally, a qualitative evaluation of the goodness of segmentation has been validated by the human experts too, confirming the results of the quantitative comparison.
2006
Medical Imaging 2006: Image Processing
San Diego, CA, usa
Feb 13-16
6144
3S1
3S9
Melli, Rudy Mirko; Grana, Costantino; Cucchiara, Rita
Comparison of color clustering algorithms for segmentation of dermatological images / Melli, Rudy Mirko; Grana, Costantino; Cucchiara, Rita. - STAMPA. - 6144:(2006), pp. 3S1-3S9. (Intervento presentato al convegno Medical Imaging 2006: Image Processing tenutosi a San Diego, CA, usa nel Feb 13-16) [10.1117/12.652061].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/464375
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