GMT:面向三维场景中6自由度物体轨迹合成的目标条件多模态变换器 / GMT: Goal-Conditioned Multimodal Transformer for 6-DOF Object Trajectory Synthesis in 3D Scenes
1️⃣ 一句话总结
这篇论文提出了一个名为GMT的多模态变换器模型,它能够根据目标位置和三维场景信息,为机器人合成出在复杂环境中既真实又精确的物体抓取和移动轨迹。
Synthesizing controllable 6-DOF object manipulation trajectories in 3D environments is essential for enabling robots to interact with complex scenes, yet remains challenging due to the need for accurate spatial reasoning, physical feasibility, and multimodal scene understanding. Existing approaches often rely on 2D or partial 3D representations, limiting their ability to capture full scene geometry and constraining trajectory precision. We present GMT, a multimodal transformer framework that generates realistic and goal-directed object trajectories by jointly leveraging 3D bounding box geometry, point cloud context, semantic object categories, and target end poses. The model represents trajectories as continuous 6-DOF pose sequences and employs a tailored conditioning strategy that fuses geometric, semantic, contextual, and goaloriented information. Extensive experiments on synthetic and real-world benchmarks demonstrate that GMT outperforms state-of-the-art human motion and human-object interaction baselines, such as CHOIS and GIMO, achieving substantial gains in spatial accuracy and orientation control. Our method establishes a new benchmark for learningbased manipulation planning and shows strong generalization to diverse objects and cluttered 3D environments. Project page: https://huajian- this http URL. io/projects/gmt/.
GMT:面向三维场景中6自由度物体轨迹合成的目标条件多模态变换器 / GMT: Goal-Conditioned Multimodal Transformer for 6-DOF Object Trajectory Synthesis in 3D Scenes
这篇论文提出了一个名为GMT的多模态变换器模型,它能够根据目标位置和三维场景信息,为机器人合成出在复杂环境中既真实又精确的物体抓取和移动轨迹。
源自 arXiv: 2603.17993