RADIOv2.5: Improved Baselines for Agglomerative Vision Foundation Models
- URL: http://arxiv.org/abs/2412.07679v2
- Date: Sun, 09 Feb 2025 15:03:08 GMT
- Title: RADIOv2.5: Improved Baselines for Agglomerative Vision Foundation Models
- Authors: Greg Heinrich, Mike Ranzinger, Hongxu, Yin, Yao Lu, Jan Kautz, Andrew Tao, Bryan Catanzaro, Pavlo Molchanov,
- Abstract summary: Agglomerative models have emerged as a powerful approach to training vision foundation models.
We identify critical challenges including resolution mode shifts, teacher imbalance, idiosyncratic teacher artifacts, and an excessive number of output tokens.
We propose several novel solutions: multi-resolution training, mosaic augmentation, and improved balancing of teacher loss functions.
- Score: 60.596005921295806
- License:
- Abstract: Agglomerative models have recently emerged as a powerful approach to training vision foundation models, leveraging multi-teacher distillation from existing models such as CLIP, DINO, and SAM. This strategy enables the efficient creation of robust models, combining the strengths of individual teachers while significantly reducing computational and resource demands. In this paper, we thoroughly analyze state-of-the-art agglomerative models, identifying critical challenges including resolution mode shifts, teacher imbalance, idiosyncratic teacher artifacts, and an excessive number of output tokens. To address these issues, we propose several novel solutions: multi-resolution training, mosaic augmentation, and improved balancing of teacher loss functions. Specifically, in the context of Vision Language Models, we introduce a token compression technique to maintain high-resolution information within a fixed token count. We release our top-performing variants at multiple scales (-B, -L, -H, and -g), along with inference code and pretrained weights
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