Evaluation of co-speech gestures grounded in word-distributed representation

Kosuke Sasaki, Jumpei Nishikawa, Junya Morita
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Abstract

The condition for artificial agents to possess perceivable intentions can be considered that they have resolved a form of the symbol grounding problem. Here, the symbol grounding is considered an achievement of the state where the language used by the agent is endowed with some quantitative meaning extracted from the physical world. To achieve this type of symbol grounding, we adopt a method for characterizing robot gestures with quantitative meaning calculated from word-distributed representations constructed from a large corpus of text. In this method, a “size image” of a word is generated by defining an axis (index) that discriminates the “size” of the word in the word-distributed vector space. The generated size images are converted into gestures generated by a physical artificial agent (robot). The robot’s gesture can be set to reflect either the size of the word in terms of the amount of movement or in terms of its posture. To examine the perception of communicative intention in the robot that performs the gestures generated as described above, the authors examine human ratings on “the naturalness” obtained through an online survey, yielding results that partially validate our proposed method. Based on the results, the authors argue for the possibility of developing advanced artifacts that achieve human-like symbolic grounding.
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基于词分布表示的协同语音手势评估
人工代理拥有可感知意图的条件可以被认为是它们已经解决了某种形式的符号基础问题。在这里,符号接地被认为是一种状态的实现,即代理使用的语言被赋予了从物理世界中提取的一些定量意义。为了实现这种类型的符号接地,我们采用了一种方法,利用从大量文本语料库中构建的单词分布表示法计算出的定量意义来描述机器人手势的特征。在这种方法中,通过定义一个轴(索引)来区分单词在单词分布向量空间中的 "大小",从而生成单词的 "大小图像"。生成的 "大小图像 "被转换成由物理人工代理(机器人)生成的手势。机器人的手势可以设置为通过运动量或姿势来反映单词的大小。为了研究机器人在执行上述手势时对交流意图的感知,作者通过在线调查研究了人类对 "自然度 "的评分,结果部分验证了我们提出的方法。基于这些结果,作者认为有可能开发出实现类似人类符号基础的先进人工智能。
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