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C-RADIOv4 (Tech Report)

Multi-teacher distillation enables unified student models that maintain and enhance multiple teacher capabilities, with C-RADIOv4 offering improved performance and efficiency through updated training teachers and enhanced resolution support.

Year
2026
Venue
arXiv 2026
Authors
7
Hosting
Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2601.17237ARXIV-DEFAULT
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Abstract

By leveraging multi-teacher distillation, agglomerative vision backbones provide a unified student model that retains and improves the distinct capabilities of multiple teachers. In this tech report, we describe the most recent release of the C-RADIO family of models, C-RADIOv4, which builds upon AM-RADIO/RADIOv2.5 in design, offering strong improvements on key downstream tasks at the same computational complexity. We release -SO400M (412M params), and -H (631M) model variants, both trained with an updated set of teachers: SigLIP2, DINOv3, and SAM3. In addition to improvements on core metrics and new capabilities from imitating SAM3, the C-RADIOv4 model family further improves any-resolution support, brings back the ViTDet option for drastically enhanced efficiency at high-resolution, and comes with a permissive license.

Authors

7