SMFormer achieves state-of-the-art self-supervised stereo matching by using vision foundation models for disturbance-resistant features and data augmentation to enforce output consistency, rivaling or exceeding some supervised methods on benchmarks including Booster.
Parameter-efficient fine-tuning for medical image analysis: The missed opportunity
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Dante is a new open-source backend for the Dafne ecosystem that implements configurable training from scratch, layer freezing, and channel-wise LoRA for medical image segmentation, with validation showing faster convergence and higher Dice scores in cross-domain MRI tasks.
The paper surveys data-centric strategies for foundation models in computational healthcare and supplies a curated list of related models and datasets.
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SMFormer: Empowering Self-supervised Stereo Matching via Foundation Models and Data Augmentation
SMFormer achieves state-of-the-art self-supervised stereo matching by using vision foundation models for disturbance-resistant features and data augmentation to enforce output consistency, rivaling or exceeding some supervised methods on benchmarks including Booster.
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Dante: An Open Source Model Pre-Training and Fine-Tuning Tool for the Dafne Federated Framework for Medical Image Segmentation
Dante is a new open-source backend for the Dafne ecosystem that implements configurable training from scratch, layer freezing, and channel-wise LoRA for medical image segmentation, with validation showing faster convergence and higher Dice scores in cross-domain MRI tasks.
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Data-Centric Foundation Models in Computational Healthcare: A Survey
The paper surveys data-centric strategies for foundation models in computational healthcare and supplies a curated list of related models and datasets.