We propose BRIC, a novel test-time adaptation (TTA) framework that enables long-term human motion generation by resolving execution discrepancies between diffusion-based kinematic motion planners and reinforcement learning-based physics controllers. While diffusion models can generate diverse and expressive motions conditioned on text and scene context, they often produce physically implausible outputs, leading to execution drift during simulation. To address this, BRIC dynamically adapts the physics controller to noisy motion plans at test time, while preserving pre-trained skills via a loss function that mitigates catastrophic forgetting. In addition, BRIC introduces a lightweight test-time guidance mechanism that steers the diffusion model in the signal space without updating its parameters. By combining both adaptation strategies, BRIC ensures consistent and physically plausible long-term executions across diverse environments in an effective and efficient manner. We validate the effectiveness of BRIC on a variety of long-term tasks, including motion composition, obstacle avoidance, and human-scene interaction, achieving state-of-the-art performance across all tasks.
翻译:我们提出BRIC,一种新颖的测试时自适应(TTA)框架,通过解决基于扩散的运动学运动规划器与基于强化学习的物理控制器之间的执行差异,实现长期人体运动生成。虽然扩散模型能够根据文本和场景上下文生成多样且富有表现力的运动,但其输出常存在物理不可行性,导致仿真过程中出现执行漂移。为解决此问题,BRIC在测试时动态调整物理控制器以适应含噪声的运动规划,同时通过损失函数保留预训练技能,以缓解灾难性遗忘。此外,BRIC引入一种轻量级测试时引导机制,在信号空间中引导扩散模型而无需更新其参数。通过结合这两种自适应策略,BRIC以高效且有效的方式确保在不同环境中实现一致且物理合理的长期执行。我们在多种长期任务(包括运动组合、避障和人-场景交互)上验证了BRIC的有效性,在所有任务中均取得了最先进的性能。