Orca is a world foundation model that pre-trains a unified latent space on 125K hours of video and 160M event annotations via unconscious and conscious next-state-prediction, then shows improved performance on frozen-backbone text, image, and action generation readouts.
General Covariant Action Modeling: Constructing Generalized Manifolds via Spatio-Temporal Decoupling
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abstract
Achieving robust generalization from limited data is a central challenge in embodied intelligence. Prevailing methods fail by regressing absolute coordinates, which violates the principle of general covariance. Fundamentally, this conflates the intrinsic task geometry with rigid execution patterns, binding policies to specific motion styles and fixed speeds. To resolve this, we propose the Generalized Action Manifold (GAM) framework that enforces general covariance through structural disentanglement. Specifically, GAM realizes the manifold by enforcing invariance across two orthogonal dimensions: (1) Temporal Invariance, utilizing an Arc-Length Parameterizer to orthogonalize the spatial path geometry from temporal dynamics, ensuring robustness to velocity variations; (2) Geometric Invariance, where a Schema-Affine-Factorization mechanism maps trajectories to canonical ``world lines'' in a pose-normalized coordinate frame. This distinguishes invariant geometric schemas from affine modulations, ensuring spatial generalizability. By integrating GAM within a structured Vision-Language-Action (VLA) architecture, we enable sparse demonstrations to densely populate a continuous, valid action manifold. Empirical results demonstrate that GAM enables superior transfer and robustness capabilities, outperforming geometry-agnostic baselines.
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cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Orca: The World is in Your Mind
Orca is a world foundation model that pre-trains a unified latent space on 125K hours of video and 160M event annotations via unconscious and conscious next-state-prediction, then shows improved performance on frozen-backbone text, image, and action generation readouts.