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What Makes Good Synthetic Training Data for Zero-Shot Stereo Matching?

23 April 2025
David Yan
Alexander Raistrick
Gaowen Liu
    3DV
ArXiv (abs)PDFHTMLGithub
Main:8 Pages
9 Figures
Bibliography:3 Pages
7 Tables
Appendix:7 Pages
Abstract

Synthetic datasets are a crucial ingredient for training stereo matching networks, but the question of what makes a stereo dataset effective remains underexplored. We investigate the design space of synthetic datasets by varying the parameters of a procedural dataset generator, and report the effects on zero-shot stereo matching performance using standard benchmarks. We validate our findings by collecting the best settings and creating a large-scale dataset. Training only on this dataset achieves better performance than training on a mixture of widely used datasets, and is competitive with training on the FoundationStereo dataset, with the additional benefit of open-source generation code and an accompanying parameter analysis to enable further research. We open-source our system at this https URL to enable further research on procedural stereo datasets.

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