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RESEARCH PRODUCT

FCA-Net: Adversarial Learning for Skin Lesion Segmentation Based on Multi-Scale Features and Factorized Channel Attention

Hatem A. RashwanMohamed Abdel-nasserAlain LalandeVivek Kumar SinghNidhi PandeyBenoit PreslesFarhan AkramDomenec PuigSantiago Romani

subject

General Computer ScienceComputer science02 engineering and technologyResidualFuzzy logic030218 nuclear medicine & medical imagingConvolutionconditional generative adversarial network03 medical and health sciencesSkin lesion0302 clinical medicineGradient vector flow0202 electrical engineering electronic engineering information engineeringGeneral Materials ScienceSegmentation[INFO]Computer Science [cs]channel attentionbusiness.industryresidual convolutionGeneral EngineeringPattern recognitionKernel (image processing)factorized kernel020201 artificial intelligence & image processingArtificial intelligencelcsh:Electrical engineering. Electronics. Nuclear engineeringbusinessEncoderlcsh:TK1-9971Dermoscopy images

description

International audience; Skin lesion segmentation in dermoscopic images is still a challenge due to the low contrast and fuzzy boundaries of lesions. Moreover, lesions have high similarity with the healthy regions in terms of appearance. In this paper, we propose an accurate skin lesion segmentation model based on a modified conditional generative adversarial network (cGAN). We introduce a new block in the encoder of cGAN called factorized channel attention (FCA), which exploits both channel attention mechanism and residual 1-D kernel factorized convolution. The channel attention mechanism increases the discriminability between the lesion and non-lesion features by taking feature channel interdependencies into account. The 1-D factorized kernel block provides extra convolutions layers with a minimum number of parameters to reduce the computations of the higher-order convolutions. Besides, we use a multi-scale input strategy to encourage the development of filters which are scale-variant (i.e., constructing a scale-invariant representation). The proposed model is assessed on three skin challenge datasets: ISBI2016, ISBI2017, and ISIC2018. It yields competitive results when compared to several state-of-the-art methods in terms of Dice coefficient and intersection over union (IoU) score. The codes of the proposed model are publicly available at https://github.com/vivek231/Skin-Project.

10.1109/access.2019.2940418https://hal-univ-bourgogne.archives-ouvertes.fr/hal-02340216