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arxiv 2504.14032 v1 pith:6GCAB457 submitted 2025-04-18 cs.CV cs.AIcs.LGeess.IV

LoftUp: Learning a Coordinate-Based Feature Upsampler for Vision Foundation Models

classification cs.CV cs.AIcs.LGeess.IV
keywords featurefeaturesupsamplerupsamplingvariousapproacharchitecturecoordinate-based
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Vision foundation models (VFMs) such as DINOv2 and CLIP have achieved impressive results on various downstream tasks, but their limited feature resolution hampers performance in applications requiring pixel-level understanding. Feature upsampling offers a promising direction to address this challenge. In this work, we identify two critical factors for enhancing feature upsampling: the upsampler architecture and the training objective. For the upsampler architecture, we introduce a coordinate-based cross-attention transformer that integrates the high-resolution images with coordinates and low-resolution VFM features to generate sharp, high-quality features. For the training objective, we propose constructing high-resolution pseudo-groundtruth features by leveraging class-agnostic masks and self-distillation. Our approach effectively captures fine-grained details and adapts flexibly to various input and feature resolutions. Through experiments, we demonstrate that our approach significantly outperforms existing feature upsampling techniques across various downstream tasks. Our code is released at https://github.com/andrehuang/loftup.

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