Title:
|
EVALUATION OF COLOR SPACES FOR UNSUPERVISED
AND DEEP LEARNING SKIN LESION SEGMENTATION |
Author(s):
|
Michael Osadebey, Marius Pedersen and Dag Waaler |
ISBN:
|
978-989-8704-21-4 |
Editors:
|
Yingcai Xiao, Ajith P. Abraham and Jörg Roth |
Year:
|
2020 |
Edition:
|
Single |
Keywords:
|
Skin Lesion, Color Space, Color Channel, Segmentation, Expectation Maximization, Deep Learning |
Type:
|
Full |
First Page:
|
91 |
Last Page:
|
98 |
Language:
|
English |
Cover:
|
|
Full Contents:
|
click to dowload
|
Paper Abstract:
|
The reliability of skin cancer diagnosis is dependent on accurate lesion segmentation. The choice of a color space in most
contributions on skin lesion segmentation for melanoma detection are based on qualitative rather than quantitative
approaches. User experience and theoretical properties of the color space are the two major factors influencing the choice
of the color space. For this reason, it may be difficult to optimize segmentation accuracy. This paper evaluates the
discrimination power of 5 color spaces and 16 color channels for two unsupervised approaches and a deep learning
approach on the segmentation of skin lesion in dermatoscopy images. 600 dermatoscopy images with different levels of
cluttering and occluding objects from two different databases were utilized. This study suggests that no single color space
or color channel is most suitable in real-world scenarios. Therefore, this study can be regarded as a general framework to
select a single or combination of color channels that will enhance the segmentation accuracy of images with different
level of scene complexities and illumination variations. |
|
|
|
|