人工智能
任务(项目管理)
计算机科学
机器人学
机器人
平面图(考古学)
对象(语法)
人机交互
感知
班级(哲学)
任务分析
计算机视觉
再培训
目标检测
运动规划
控制(管理)
领域(数学)
极限(数学)
自动化
视觉对象识别的认知神经科学
贴片设备
作者
Xue Min,Jincheng Yu,Lingkun Xiu,Jiahao Tang,Xudong Cai,Yali Zhao,Shuang Liang,Yu Wang
标识
DOI:10.1109/wrcsara68202.2025.11195059
摘要
To plan and execute robotics tasks, 3D scene perception and understanding are critical for robots to interact with complex environments effectively. Traditional systems often rely on closed vocabularies and are constrained by pre-defined object categories, which limit their flexibility. In this paper, we propose 3DS-Plan, an open-vocabulary 3D scene perception and generation model designed to facilitate long-horizon task planning. It leverages the pre-trained foundation models to support robotic scene understanding and further provides environmental details to infer actionable steps in various scenarios. We validate the effectiveness of our frame-work through comprehensive experiments. It demonstrates a 31.41 % improvement in computational efficiency for class operations and at least a 14.52 % increase in success rates for complex tasks without requiring extensive retraining or extra annotation. The corresponding project page is available at https://techpage.github.i0/open3dsp/.
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