EgoFun3D creates a new task, 271-video dataset, and pipeline using function templates to model interactive 3D objects from egocentric videos for simulation.
arXiv preprint arXiv:2602.16356 (2026) 4
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AnchorD anchors monocular depth priors in metric sensor data via patch-wise affine alignment using factor graph optimization, improving accuracy on non-Lambertian objects and introducing a new benchmark dataset with dense ground truth.
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EgoFun3D: Modeling Interactive Objects from Egocentric Videos using Function Templates
EgoFun3D creates a new task, 271-video dataset, and pipeline using function templates to model interactive 3D objects from egocentric videos for simulation.
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AnchorD: Metric Grounding of Monocular Depth Using Factor Graphs
AnchorD anchors monocular depth priors in metric sensor data via patch-wise affine alignment using factor graph optimization, improving accuracy on non-Lambertian objects and introducing a new benchmark dataset with dense ground truth.