Recent advances in hyperspectral imaging for melanoma detection
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Fred Godtliebsen | Aday García | Himar Fabelo | Thomas Haugland Johansen | Kajsa Møllersen | Samuel Ortega | Gustavo M. Callico | F. Godtliebsen | G. Callicó | Kajsa Møllersen | S. Ortega | H. Fabelo | T. Johansen | Aday García
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