Skin lesion segmentation based on preprocessing, thresholding and neural networks
This abstract describes the segmentation system used to participate in the challenge ISIC 2017: Skin Lesion Analysis Towards Melanoma Detection. Several preprocessing techniques have been tested for three color representations (RGB, YCbCr and HSV) of 392 images. Results have been used to choose the...
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Zusammenfassung: | This abstract describes the segmentation system used to participate in the
challenge ISIC 2017: Skin Lesion Analysis Towards Melanoma Detection. Several
preprocessing techniques have been tested for three color representations (RGB,
YCbCr and HSV) of 392 images. Results have been used to choose the better
preprocessing for each channel. In each case a neural network is trained to
predict the Jaccard Index based on object characteristics. The system includes
black frames and reference circle detection algorithms but no special treatment
is done for hair removal. Segmentation is performed in two steps first the best
channel to be segmented is chosen by selecting the best neural network output.
If this output does not predict a Jaccard Index over 0.5 a more aggressive
preprocessing is performed using open and close morphological operations and
the segmentation of the channel that obtains the best output from the neural
networks is selected as the lesion. |
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DOI: | 10.48550/arxiv.1703.04845 |