2023
DOI: 10.1109/jbhi.2023.3247479
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M-CSAFN: Multi-Color Space Adaptive Fusion Network for Automated Port-Wine Stains Segmentation

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Cited by 4 publications
(1 citation statement)
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“…R. Azad [13] and colleagues proposed TransCeption, which utilizes converters and U-shaped network architectures to enhance feature fusion by redesigning modules and introducing multi-scale feature extraction. J. Mu [14] and colleagues proposed M-CSAFN, which uses a multi-color space adaptive fusion network for PWS segmentation, focusing on the internal differences caused by color heterogeneity. D. Dai [15] and colleagues proposed Ms RED, which uses a multi-scale residual coding fusion module and a decoding fusion module to adaptively fuse multi-scale features and introduces multi-resolution and multi-channel feature fusion modules to enhance feature expression.…”
Section: Introductionmentioning
confidence: 99%
“…R. Azad [13] and colleagues proposed TransCeption, which utilizes converters and U-shaped network architectures to enhance feature fusion by redesigning modules and introducing multi-scale feature extraction. J. Mu [14] and colleagues proposed M-CSAFN, which uses a multi-color space adaptive fusion network for PWS segmentation, focusing on the internal differences caused by color heterogeneity. D. Dai [15] and colleagues proposed Ms RED, which uses a multi-scale residual coding fusion module and a decoding fusion module to adaptively fuse multi-scale features and introduces multi-resolution and multi-channel feature fusion modules to enhance feature expression.…”
Section: Introductionmentioning
confidence: 99%