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Towards Data-Efficient Video Pre-training with Frozen Image Foundation Models

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Video foundation models achieve strong performance across many video understanding tasks, but typically require large-scale pre-training on massive video datasets, resulting in substantial data and compute costs. In contrast, modern image foundation models already provide powerful spatial representations. This raises an important question: can competitive video models be built by reusing these spatial representations and pre-training only for temporal reasoning? We take initial steps toward exploring a lightweight training paradigm that freezes a pre-trained image foundation model and trains only a recurrent temporal module to process streaming video. By reusing an image foundation model as a spatial encoder, this approach could significantly reduce the amount of video data and compute required compared to end-to-end video pre-training. In this work, we explore the feasibility of this approach before investing in computing for video pre-training. Our empirical findings across multiple video understanding tasks suggest that strong temporal performance can emerge without large-scale video pre-training, motivating future work on recurrent video foundation models obtained by pre-training a temporal module on top of a frozen image foundation model. Code: https://github.com/tue-mps/towards-video-image-frozen .

Svetlana Orlova, Niccol\`o Cavagnero, Gijs Dubbelman• 2026

Related benchmarks

TaskDatasetResultRank
Point TrackingPerception (test)
AJ Score75.1
14
Video Semantic SegmentationWaymo
mIoU94.9
13
Video ClassificationSS v2
Accuracy (%)66.4
13
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