Dual-resolution residual architecture with boundary-aware connections, channel attention, artifact suppression, and combined Dice-Tversky plus boundary and contrastive losses improves lesion boundary precision over standard encoder-decoder models on dermoscopic benchmarks.
Advances in Neural Information Processing Systems 34, 3978–3990 (2021)
3 Pith papers cite this work. Polarity classification is still indexing.
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DualResolution Residual Architecture with Artifact Suppression for Melanocytic Lesion Segmentation
Dual-resolution residual architecture with boundary-aware connections, channel attention, artifact suppression, and combined Dice-Tversky plus boundary and contrastive losses improves lesion boundary precision over standard encoder-decoder models on dermoscopic benchmarks.
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