Dermo-DOCTOR: A web application for detection and recognition of the
skin lesion using a deep convolutional neural network
- URL: http://arxiv.org/abs/2102.01824v1
- Date: Wed, 3 Feb 2021 01:14:52 GMT
- Title: Dermo-DOCTOR: A web application for detection and recognition of the
skin lesion using a deep convolutional neural network
- Authors: Md. Kamrul Hasan, Shidhartho Roy, Chayan Mondal, Md. Ashraful Alam,
Md.Toufick E Elahi, Aishwariya Dutta, S. M. Taslim Uddin Raju, Mohiuddin
Ahmad
- Abstract summary: This article proposes an end-to-end deep CNN-based multi-task web application for concurrent detection and recognition of skin lesion, named Dermo-DOCTOR.
For the detection sub-network, the Fused Feature Map (FFM) is used for decoding to obtain the input resolution of the output lesion masks.
For the recognition sub-network, feature maps of two encoders and FFM are used for the aggregation to obtain a final lesion class.
- Score: 3.7242808753092502
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Automated skin lesion analysis for detection and recognition is still
challenging for inter-class diversity and intra-class similarity, and the low
generic capability of a single Convolutional Neural Network (CNN) with limited
datasets. This article proposes an end-to-end deep CNN-based multi-task web
application for concurrent detection and recognition of skin lesion, named
Dermo-DOCTOR, consisting of two encoders, where the features from each encoder
are fused in channel-wise, called Fused Feature Map (FFM). For the detection
sub-network, the FFM is used for decoding to obtain the input resolution of the
output lesion masks, where the outputs of each stage of two encoders are
concatenated with the same scale decoder output to regain the lost spatial
information due to pooling in encoders. For the recognition sub-network,
feature maps of two encoders and FFM are used for the aggregation to obtain a
final lesion class. We train and evaluate the Dermo-Doctor utilizing two
publicly available benchmark datasets, such as ISIC-2016 and ISIC-2017. The
obtained mean intersection over unions, for detection sub-network, are 85.0 %
and 80.0 %, whereas the areas under the receiver operating characteristic
curve, for recognition sub-network, are 0.98 and 0.91, respectively, for
ISIC-2016 and ISIC-2017 test datasets. The experimental results demonstrate
that the proposed Dermo-DOCTOR outperforms the alternative methods mentioned in
the literature, designed for skin lesion detection and recognition. As the
Dermo-DOCTOR provides better-results on two different test datasets, even with
limited training data, it can be an auspicious computer-aided screening tool to
assist the dermatologists.
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