Technological progress increasingly envisions the use of robots interacting with people in everyday life. Human-robot collaboration (HRC) is the approach that explores the interaction between a human and a robot, during the completion of a common objective, at the cognitive and physical level. In HRC works, a cognitive model is typically built, which collects inputs from the environment and from the user, elaborates and translates these into information that can be used by the robot itself. Machine learning is a recent approach to build the cognitive model and behavioural block, with high potential in HRC. Consequently, this paper proposes a thorough literature review of the use of machine learning techniques in the context of human-robot collaboration. 45 key papers were selected and analysed, and a clustering of works based on the type of collaborative tasks, evaluation metrics and cognitive variables modelled is proposed. Then, a deep analysis on different families of machine learning algorithms and their properties, along with the sensing modalities used, is carried out. Among the observations, it is outlined the importance of the machine learning algorithms to incorporate time dependencies. The salient features of these works are then cross-analysed to show trends in HRC and give guidelines for future works, comparing them with other aspects of HRC not appeared in the review.
翻译:人类机器人合作(HRC)是探索人类和机器人在完成认知和物理层面的共同目标时,在认知和物理层面探索人类和机器人之间相互作用的方法; 在人权理事会的工作中,通常会建立一个认知模型,收集来自环境和用户的投入,详细阐述这些投入并将其转化为可由机器人自己使用的信息; 机器学习是最近建立认知模型和行为块的一种方法,在人权理事会具有很大潜力。 因此,本文件提议在人类机器人合作的背景下,对机器学习技术的使用进行彻底的文献审查。 挑选和分析了45份关键文件,并根据协作任务类型、评价指标和认知变量模型对工作进行分组; 然后,对机器学习算法及其特性的不同家庭以及所使用的感知模式进行深入分析。 在观察中,它概述了机器学习算法纳入时间依赖性的重要性。 然后,这些工程的突出特征与人权理事会中出现的趋势、评价指标和认知变量模型的组合没有相互比较。