TeamHOI:学习一种适用于任意团队规模的协作式人-物交互的统一策略 / TeamHOI: Learning a Unified Policy for Cooperative Human-Object Interactions with Any Team Size
1️⃣ 一句话总结
这篇论文提出了一个名为TeamHOI的框架,它能让多个虚拟人形角色用一个统一的策略,像真实团队一样协作搬运各种形状的物体,并且无论团队人数多少都能灵活适应。
Physics-based humanoid control has achieved remarkable progress in enabling realistic and high-performing single-agent behaviors, yet extending these capabilities to cooperative human-object interaction (HOI) remains challenging. We present TeamHOI, a framework that enables a single decentralized policy to handle cooperative HOIs across any number of cooperating agents. Each agent operates using local observations while attending to other teammates through a Transformer-based policy network with teammate tokens, allowing scalable coordination across variable team sizes. To enforce motion realism while addressing the scarcity of cooperative HOI data, we further introduce a masked Adversarial Motion Prior (AMP) strategy that uses single-human reference motions while masking object-interacting body parts during training. The masked regions are then guided through task rewards to produce diverse and physically plausible cooperative behaviors. We evaluate TeamHOI on a challenging cooperative carrying task involving two to eight humanoid agents and varied object geometries. Finally, to promote stable carrying, we design a team-size- and shape-agnostic formation reward. TeamHOI achieves high success rates and demonstrates coherent cooperation across diverse configurations with a single policy.
TeamHOI:学习一种适用于任意团队规模的协作式人-物交互的统一策略 / TeamHOI: Learning a Unified Policy for Cooperative Human-Object Interactions with Any Team Size
这篇论文提出了一个名为TeamHOI的框架,它能让多个虚拟人形角色用一个统一的策略,像真实团队一样协作搬运各种形状的物体,并且无论团队人数多少都能灵活适应。
源自 arXiv: 2603.07988