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    Melanoma Diagnosis by the Use of Wavelet Analysis based on Morphological Operators

    Fassihi, Nima; Shanbehzadeh, Jamshid; Sarrafzadeh, Hossein; Ghasemi, Elham

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    Melanoma Diagnosis by the Use of Wavelet Analysis based on Morphological Operators.pdf (2.030Mb)
    Date
    2011-03
    Citation:
    Fassihi, N., Shanbehzadeh, J., Sarrafzadeh, A., and Ghasemi, E. (2011). Melanoma Diagnosis by the Use of Wavelet Analysis based on Morphological Operators. Proceedings of the International MultiConference of Engineers and Computer Scientists.(Ed.), (pp.193-196). 1.
    Permanent link to Research Bank record:
    https://hdl.handle.net/10652/3051
    Abstract
    Skin melanoma is the most dangerous type of skin cancer which is curable if diagnosed at the right time.. Drawing distinction between melanoma and mole is a difficult task and needs detailed laboratory tests. Utilizing morphologic operators in segmenting and wavelet analysis in order to extract the features has culminated in better result in melanoma diagnosis. This paper employs coefficients of wavelet decomposition to extract image's features. Melanoma classification is carried out by using the variance and mean of wavelet coefficients of images as the inputs of neural network. Results show 90% ability In distinction between benign and malignant lesions.
    Keywords:
    feature extraction, skin melanoma, segmentation, wavelet transform
    ANZSRC Field of Research:
    0803 Computer Software, 111202 Cancer Diagnosis
    Copyright Holder:
    International MultiConference of Engineers and Computer Scientists.

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    This digital work is protected by copyright. It may be consulted by you, provided you comply with the provisions of the Act and the following conditions of use. These documents or images may be used for research or private study purposes. Whether they can be used for any other purpose depends upon the Copyright Notice above. You will recognise the author's and publishers rights and give due acknowledgement where appropriate.
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    • Computing Journal Articles [51]

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