Publication | Closed Access
Set of descriptors for skin cancer diagnosis using non-dermoscopic color images
32
Citations
11
References
2016
Year
Unknown Venue
EngineeringFeature DetectionBiometricsDigital PathologyPathologyFuzzy C-meansDermatologyMelanoma LesionsSkin Cancer DiagnosisImage ClassificationImage AnalysisCancer DetectionPattern RecognitionBiostatisticsNon-dermoscopic Color ImagesRadiologySkin CancerDermoscopic ImageMedical ImagingMelanomaHistopathologyVisual DiagnosisMedical Image ComputingComputer VisionMedicine
Melanoma is the deadliest form of skin cancer. Diagnosis of melanoma in early stages significantly enhances the survival rate. Recently there has been a rising trend in web-based and mobile applications for early detection of melanoma using images captured by conventional cameras. These images usually contain fewer detailed information in comparison with dermoscopic (microscopic) images. Meanwhile, non-dermoscopic images have the advantage of broad availability. In this paper a set of ten features is proposed which cover different color characteristics of melanoma visible in skin images. The first 5 features are extracted using Fuzzy C-means clustering based on color variations and color spatial distributions of pigmented skin. These features are shown to be discriminative for melanoma lesions. The next 5 features consider colors and intensity of the colors. Hence, a 10 dimensional color feature space is formed. Experimental results show that classification accuracy of suspicious moles, by the proposed set of features, outperforms comparable state-of-the-art methods.
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