This paper presents the first active object mapping framework for complex robotic manipulation and autonomous perception tasks. The framework is built on an object SLAM system integrated with a simultaneous multi-object pose estimation process that is optimized for robotic grasping. Aiming to reduce the observation uncertainty on target objects and increase their pose estimation accuracy, we also design an object-driven exploration strategy to guide the object mapping process, enabling autonomous mapping and high-level perception. Combining the mapping module and the exploration strategy, an accurate object map that is compatible with robotic grasping can be generated. Additionally, quantitative evaluations also indicate that the proposed framework has a very high mapping accuracy. Experiments with manipulation (including object grasping and placement) and augmented reality significantly demonstrate the effectiveness and advantages of our proposed framework.
翻译:本文件介绍了用于复杂机器人操作和自主认知任务的首个主动物体绘图框架,该框架以目标物体SLAM系统为基础,结合了同时使用的多物体估计过程,优化了对机器人的掌握。为了减少目标物体的观测不确定性并提高其估计准确性,我们还设计了一个由物体驱动的勘探战略,以指导物体绘图过程,促成自主绘图和高层次认知。将绘图模块和勘探战略结合起来,可以产生一个与机器人捕捉兼容的准确的物体地图。此外,定量评估还表明,拟议框架具有很高的绘图准确性。操作实验(包括物体捕捉和定位)以及扩大现实,极大地展示了我们拟议框架的有效性和优势。