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New Humanoid-OmniOcc Dataset Enhances Robot Occupancy Prediction

Researchers have introduced Humanoid-OmniOcc, a new dataset designed to improve occupancy prediction for humanoid robots. This dataset addresses the limitations of existing datasets, which are often biased towards autonomous driving scenarios. Humanoid-OmniOcc features a Real2Sim2Real paradigm, using real sensor specifications to guide simulation and then evaluating models trained in simulation on real-world data. The dataset includes a proposed Humanoid Surround Stereo-guided Occupancy model that leverages depth priors for enhanced 2D-to-3D lifting, demonstrating strong performance on both simulated and real-world environments. AI

IMPACT This dataset and model aim to improve robotic navigation and interaction in complex environments by providing better occupancy prediction for humanoid robots.

RANK_REASON The cluster describes a new dataset and model for embodied AI research. [lever_c_demoted from research: ic=1 ai=1.0]

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New Humanoid-OmniOcc Dataset Enhances Robot Occupancy Prediction

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  1. Hugging Face Daily Papers TIER_1 English(EN) ·

    Humanoid-OmniOcc: Stereo-Based Full-View Occupancy Dataset for Embodied AI

    Occupancy prediction at voxel-level granularity is essential for safe robotic navigation and interaction in complex environments. Existing occupancy datasets, however, are predominantly designed for autonomous driving with vehicle-centric biases -- forward-facing cameras, far-fie…