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arXiv 提交日期: 2026-03-16
📄 Abstract - HSImul3R: Physics-in-the-Loop Reconstruction of Simulation-Ready Human-Scene Interactions

We present HSImul3R, a unified framework for simulation-ready 3D reconstruction of human-scene interactions (HSI) from casual captures, including sparse-view images and monocular videos. Existing methods suffer from a perception-simulation gap: visually plausible reconstructions often violate physical constraints, leading to instability in physics engines and failure in embodied AI applications. To bridge this gap, we introduce a physically-grounded bi-directional optimization pipeline that treats the physics simulator as an active supervisor to jointly refine human dynamics and scene geometry. In the forward direction, we employ Scene-targeted Reinforcement Learning to optimize human motion under dual supervision of motion fidelity and contact stability. In the reverse direction, we propose Direct Simulation Reward Optimization, which leverages simulation feedback on gravitational stability and interaction success to refine scene geometry. We further present HSIBench, a new benchmark with diverse objects and interaction scenarios. Extensive experiments demonstrate that HSImul3R produces the first stable, simulation-ready HSI reconstructions and can be directly deployed to real-world humanoid robots.

顶级标签: robotics computer vision multi-modal
详细标签: 3d reconstruction human-scene interaction physics simulation reinforcement learning embodied ai 或 搜索:

HSImul3R:基于物理循环的仿真就绪人-场景交互重建 / HSImul3R: Physics-in-the-Loop Reconstruction of Simulation-Ready Human-Scene Interactions


1️⃣ 一句话总结

这篇论文提出了一个名为HSImul3R的新方法,它通过将物理仿真器作为核心监督者,联合优化人体动作和场景几何,从而从少量图像或视频中重建出既真实又符合物理规律的虚拟人-场景交互模型,可直接用于机器人等应用。

源自 arXiv: 2603.15612