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MULTIMODAL AFFECT MODELING AND RECOGNITION FOR EMPATHIC ROBOT COMPANIONS

机译:易感机器人的多模态影响建模与识别

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摘要

Affect recognition for socially perceptive robots relies on representative data. While many of the existing affective corpora and databases contain posed and decontextualized affective expressions, affect resources for designing an affect recognition system in naturalistic human-robot interaction (HRI) must include context-rich expressions that emerge in the same scenario of the final application. In this paper, we propose a context-based approach to the collection and modeling of representative data for building an affect-sensitive robotic game companion. To illustrate our approach we present the key features of the Inter-ACT (INTEr-acting with Robots-Affect Context Task) corpus, an affective and contextually rich multi-modal video corpus containing affective expressions of children playing chess with an iCat robot. We show how this corpus can be successfully used to train a context-sensitive affect recognition system (a valence detector) for a robotic game companion. Finally, we demonstrate how the integration of the affect recognition system in a modular platform for adaptive HRI makes the interaction with the robot more engaging.
机译:对社交感知机器人的情感识别依赖于代表性数据。虽然许多现有的情感语料库和数据库都包含姿势和去上下文的情感表达,但是在自然人机交互(HRI)中设计情感识别系统的情感资源必须包含在最终应用程序的同一场景中出现的上下文相关表达。在本文中,我们提出了一种基于上下文的方法来对代表数据进行收集和建模,以构建情感敏感的机器人游戏伴侣。为了说明我们的方法,我们介绍了Inter-ACT(与机器人互动的情境任务执行INTEr-作用)语料库的主要功能,该语料库是一种情感和内容丰富的多模式视频语料库,其中包含使用iCat机器人下棋的孩子的情感表达。我们展示了如何将该语料库成功地用于训练机器人游戏伴侣的上下文相关的情感识别系统(价检测器)。最后,我们演示了如何将情感识别系统集成到自适应HRI的模块化平台中,如何使与机器人的交互更具吸引力。

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