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Grounding of Word Meanings in Latent Dirichlet Allocation-Based Multimodal Concepts

机译:基于潜在狄利克雷分配的多峰概念中词义的扎根

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摘要

In this paper we propose a latent Dirichlet allocation (LDA)-based framework for multimodal categorization and words grounding by robots. The robot uses its physical embodiment to grasp and observe an object from various view points, as well as to listen to the sound during the observing period. This multimodal information is used for categorizing and forming multimodal concepts using multimodal LDA. At the same time, the words acquired during the observing period are connected to the related concepts, which are represented by the multimodal LDA. We also provide a relevance measure that encodes the degree of connection between words and modalities. The proposed algorithm is implemented on a robot platform and some experiments are carried out to evaluate the algorithm. We also demonstrate simple conversation between a user and the robot based on the learned model.
机译:在本文中,我们提出了一种基于潜在狄利克雷分配(LDA)的框架,用于机器人的多峰分类和单词基础。机器人使用其物理实施例从各个角度抓取和观察对象,并在观察期间收听声音。此多峰信息用于使用多峰LDA进行分类和形成多峰概念。同时,在观察期间获得的单词与以多峰LDA表示的相关概念相关。我们还提供了一种相关性度量,该度量对单词和情态之间的连接程度进行编码。该算法在机器人平台上实现,并通过实验进行了评估。我们还将根据所学习的模型演示用户与机器人之间的简单对话。

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