通过智能动作库实现情境机器人操纵

G Sheng, L Zhiyang, Z Ruiteng, Z Lei, Y Chengran, Z Zhengshen and M H Ang
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引用次数: 0

摘要

在传统的能力检测领域,主要目标是深入了解物体的潜在用途。然而,由于这些传统方法仅仅将承受力检测作为语义分割任务来处理,而忽略了将承受力解释为可由操纵者执行的动作这一重要方面,因此仍然存在很大的局限性。为了解决这一关键问题,我们提出了一种包含智能动作库(IAL)概念的新型管道。该框架可对各种操纵任务进行承受能力解释,并根据检测到的承受能力和人机交互情况,教授和指导机器人如何执行特定动作。通过真实世界的实验,我们证明了我们管道的独创性和可靠性,有效地弥合了能力检测与操纵任务规划和执行之间的差距。IAL 的集成促进了对能力的理解与增强机器人执行任务的精确性和效率之间的无缝连接。演示链接向公众开放:https://youtu.be/_oBAer2Vl8k
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Affordance-informed Robotic Manipulation via Intelligent Action Library
In the realm of conventional affordance detection, the primary objective is to provide insights into the potential uses of objects. However, a significant limitation remains as these conventional methods merely treat affordance detection as a semantic segmentation task, disregarding the crucial aspect of interpreting affordances for actions that can be performed by manipulator. To address this critical gap, we present a novel pipeline incorporating the Intelligent Action Library (IAL) concept. This framework enables affordance interpretation for various manipulation tasks, allowing robots to be taught and guided on how to execute specific actions based on the detected affordances and human-robot interaction. Through real-world experiments, we have demonstrated the ingenuity and dependability of our pipeline, effectively bridging the gap between affordance detection and manipulation task planning and execution. The integration of IAL facilitates a seamless connection between understanding affordances and empowering robots to perform tasks with precision and efficiency. The demo link is available to the public: https://youtu.be/_oBAer2Vl8k
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