Abstract
Skin cancer is the most commonly diagnosed type of cancer in people, regardless of age, gender, or race. One of the most common malignant skin cancers is melanoma, which is a dangerous proliferation of melanocytes. It is a well-known fact that early diagnosis of skin cancer is crucial and allows for successful treatment. Treatment of melanoma is not effective when melanoma is at an advanced stage. A widely used tool for the examination of skin lesions is a dermatoscope, which uses optic magnification to visualize features that are invisible to the naked eye. For a precise and objective diagnosis, there is a need for a computerized method for the removal and inpainting of hairs in image processing. In this study, we present an algorithm for the detection and inpainting of hairs in color dermoscopic images.
This scientific research was supported by the National Science Center as research project no. 2011/01/N/ST7/06783.
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©2013 by Walter de Gruyter Berlin Boston
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- Hair removal from dermoscopic color images
- Imaging of the heart with phonocardiography
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Artikel in diesem Heft
- Masthead
- Masthead
- Hair removal from dermoscopic color images
- Imaging of the heart with phonocardiography
- Time-frequency analysis of accelerometry data for seizure detection
- Usefulness of EGI EEG system in brain computer interface research
- Structural role of exons in hemoglobin
- Assessment of thermal diffusion in the natural biological environment
- Serious games in medicine