AtteConDA adds attention-based conflict suppression to multi-condition diffusion models so that generated driving-scene images retain richer structural cues from the original annotations.
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MAE-SAM2 integrates MAE self-supervised learning with SAM2 to achieve superior segmentation of retinal vascular leakage on fluorescein angiography images, with highest Dice/IoU scores and 5% improvement over original SAM2.
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AtteConDA: Attention-Based Conflict Suppression in Multi-Condition Diffusion Models and Synthetic Data Augmentation
AtteConDA adds attention-based conflict suppression to multi-condition diffusion models so that generated driving-scene images retain richer structural cues from the original annotations.
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MAE-SAM2: Mask Autoencoder-Enhanced SAM2 for Clinical Retinal Vascular Leakage Segmentation
MAE-SAM2 integrates MAE self-supervised learning with SAM2 to achieve superior segmentation of retinal vascular leakage on fluorescein angiography images, with highest Dice/IoU scores and 5% improvement over original SAM2.