论文标题
凝视和运动特征的意图估算人类机器人共享控制对象操纵
Intention estimation from gaze and motion features for human-robot shared-control object manipulation
论文作者
论文摘要
共享控制可以通过协助执行用户意图来帮助进行远程处理的对象操纵。为此,需要稳健和及时的意图估计,这依赖于行为观察。在这里,提出了一个意图估计框架,该框架使用自然目光和运动功能来预测当前的动作和目标对象。该系统在模拟环境中进行了训练和测试,并在相对混乱的场景和双手中产生的拾音器和放置序列,另一方面可能是手动旋转的。验证是在不同的用户和手中进行的,实现了预测的准确性和优势。对单个特征的预测能力的分析表明,在当前动作的早期识别中,抓握触发器和凝视特征的优势。在当前框架中,可以将相同的概率模型用于并行和独立工作的两只手,而提出了基于规则的模型来识别所得的双人行动。最后,讨论了这种方法对更复杂,全三层操作的局限性和观点。
Shared control can help in teleoperated object manipulation by assisting with the execution of the user's intention. To this end, robust and prompt intention estimation is needed, which relies on behavioral observations. Here, an intention estimation framework is presented, which uses natural gaze and motion features to predict the current action and the target object. The system is trained and tested in a simulated environment with pick and place sequences produced in a relatively cluttered scene and with both hands, with possible hand-over to the other hand. Validation is conducted across different users and hands, achieving good accuracy and earliness of prediction. An analysis of the predictive power of single features shows the predominance of the grasping trigger and the gaze features in the early identification of the current action. In the current framework, the same probabilistic model can be used for the two hands working in parallel and independently, while a rule-based model is proposed to identify the resulting bimanual action. Finally, limitations and perspectives of this approach to more complex, full-bimanual manipulations are discussed.