• Corpus ID: 7950515

Detection and Analysis of Skin Cancer in Skin Lesions by using Segmentation

@inproceedings{Gajbar2015DetectionAA,
  title={Detection and Analysis of Skin Cancer in Skin Lesions by using Segmentation},
  author={Amruta M. Gajbar and A. S. Deshpande},
  year={2015}
}
Irregular streaks square measure vital clues for malignant melanoma (a probably fatal type of skin cancer) identification mistreatment dermatoscopy pictures. our paper extends our previous algorithmic rule to spot the absence or presence of streaks in skin lesions, by any analyzing the looks of detected streak lines, and playacting a three-party classification for streaks, Absent, Regular, and Irregular, in a very pigmented skin lesion. additionally, the directional pattern of discovered lines… 

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