dc.description.abstract |
Automatic skin lesion segmentation in
dermoscopic images is an essential requirement for making the
computer-aided diagnosis (CADs) system, but efficiently
segmenting skin lesions by using automated methods is not easy
due to the factors such as color variations, illumination
variations, presence of hair, etc. Researchers have recently been
exploring deep convolutional neural networks (CNN) based
methods in this domain. In this paper, we present a new and
effective multi-path deep CNN method for automated skin
lesion segmentation. The proposed network uses an encoder
network in the first path and uses the learning representation
from a pretrained base model's intermediate layers in its second
path, for better learning of the features at different levels. Also,
we use Instance Normalization that makes the network adaptive
for each image and alleviates the problem that occurs due to
different intensity images. Our method does not require any
pre- or post- processing of the input dermoscopic images, except
resizing in the beginning. The comparative performance
evaluation of the proposed method is performed by considering
two benchmark datasets: ISBI-2016 and ISBI-2017 and
commonly used evaluation metrics including jaccard index and
dice coefficient. The results analysis demonstrates the
effectiveness of our approach, with our method achieving better
performance in comparison to existing state-of-the-art methods
overall and also on melanoma and non-melanoma images,
across both the datasets. |
en_US |