Towards incremental learning of task-dependent action sequences using probabilistic parsing

Kyuhwa Lee, Y. Demiris
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引用次数: 10

Abstract

We study an incremental process of learning where a set of generic basic actions are used to learn higher-level task-dependent action sequences. A task-dependent action sequence is learned by associating the goal given by a human demonstrator with the task-independent, general-purpose actions in the action repertoire. This process of contextualization is done using probabilistic parsing. We propose stochastic context-free grammars as the representational framework due to its robustness to noise, structural flexibility, and easiness on defining task-independent actions. We demonstrate our implementation on a real-world scenario using a humanoid robot and report implementation issues we had.
基于概率分析的任务相关动作序列的增量学习
我们研究了一个渐进的学习过程,其中一组通用的基本动作被用来学习更高层次的任务相关动作序列。通过将人类演示者给出的目标与动作表中与任务无关的通用动作相关联,可以学习与任务相关的动作序列。这种上下文化过程是使用概率解析完成的。我们提出随机上下文无关语法作为表征框架,因为它对噪声具有鲁棒性、结构灵活性和易于定义任务无关动作。我们使用人形机器人在真实场景中演示我们的实现,并报告我们遇到的实现问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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