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arxiv: 2412.09912 · v1 · pith:BDZSOX3B · submitted 2024-12-13 · cs.CV

All-in-One: Transferring Vision Foundation Models into Stereo Matching

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classification cs.CV
keywords knowledgevfmsmatchingstereoheterogeneousmultipletransfervision
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As a fundamental vision task, stereo matching has made remarkable progress. While recent iterative optimization-based methods have achieved promising performance, their feature extraction capabilities still have room for improvement. Inspired by the ability of vision foundation models (VFMs) to extract general representations, in this work, we propose AIO-Stereo which can flexibly select and transfer knowledge from multiple heterogeneous VFMs to a single stereo matching model. To better reconcile features between heterogeneous VFMs and the stereo matching model and fully exploit prior knowledge from VFMs, we proposed a dual-level feature utilization mechanism that aligns heterogeneous features and transfers multi-level knowledge. Based on the mechanism, a dual-level selective knowledge transfer module is designed to selectively transfer knowledge and integrate the advantages of multiple VFMs. Experimental results show that AIO-Stereo achieves start-of-the-art performance on multiple datasets and ranks $1^{st}$ on the Middlebury dataset and outperforms all the published work on the ETH3D benchmark.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. MLG-Stereo: ViT Based Stereo Matching with Multi-Stage Local-Global Enhancement

    cs.CV 2026-04 unverdicted novelty 6.0

    MLG-Stereo adds multi-granularity feature extraction, local-global cost volumes, and guided recurrent refinement to ViT stereo matching, yielding competitive results on Middlebury, KITTI-2015, and strong results on KI...

  2. Lite Any Stereo: Efficient Zero-Shot Stereo Matching

    cs.CV 2025-11 unverdicted novelty 6.0

    Lite Any Stereo delivers top-ranked zero-shot accuracy on four real-world stereo benchmarks using a lightweight backbone, hybrid cost aggregation, and three-stage training on million-scale data, at less than 1% of typ...

  3. Lite Any Stereo V2: Faster and Stronger Efficient Zero-Shot Stereo Matching

    cs.CV 2026-06 unverdicted novelty 5.0

    LAS2 is a series of efficient stereo matching models that reach state-of-the-art zero-shot performance among fast methods while running 1.8-2.7x faster than prior iterative approaches on H200 and Orin hardware.