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Detecting and Classifying Human Touches in a Social Robot Through Acoustic Sensing and Machine Learning

机译:通过声音感应和机器学习对社交机器人中的人为触摸进行检测和分类

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摘要

An important aspect in Human–Robot Interaction is responding to different kinds of touch stimuli. To date, several technologies have been explored to determine how a touch is perceived by a social robot, usually placing a large number of sensors throughout the robot’s shell. In this work, we introduce a novel approach, where the audio acquired from contact microphones located in the robot’s shell is processed using machine learning techniques to distinguish between different types of touches. The system is able to determine when the robot is touched (touch detection), and to ascertain the kind of touch performed among a set of possibilities: stroke , tap , slap , and tickle (touch classification). This proposal is cost-effective since just a few microphones are able to cover the whole robot’s shell since a single microphone is enough to cover each solid part of the robot. Besides, it is easy to install and configure as it just requires a contact surface to attach the microphone to the robot’s shell and plug it into the robot’s computer. Results show the high accuracy scores in touch gesture recognition. The testing phase revealed that Logistic Model Trees achieved the best performance, with an F -score of 0.81. The dataset was built with information from 25 participants performing a total of 1981 touch gestures.
机译:人机交互中的一个重要方面是对不同种类的触摸刺激做出响应。迄今为止,已经探索了几种技术来确定社交机器人如何感知触摸,通常会在机器人的外壳上放置大量传感器。在这项工作中,我们引入了一种新颖的方法,其中使用机器学习技术处理从位于机器人外壳中的接触式麦克风获取的音频,以区分不同类型的触摸。该系统能够确定何时触摸机器人(触摸检测),并确定在一系列可能性中执行的触摸种类:笔划,轻击,拍打和挠痒痒(触摸分类)。这项建议具有成本效益,因为只有一个麦克风就能覆盖整个机器人的外壳,因为单个麦克风足以覆盖机器人的每个坚固部分。此外,安装和配置起来很容易,因为它只需要一个接触面即可将麦克风固定到机器人的外壳上,然后将其插入机器人的计算机中。结果表明,触摸手势识别的准确性得分很高。测试阶段表明,逻辑模型树的F得分为0.81,达到了最佳性能。该数据集由来自25位参与者的信息构成,这些参与者总共进行了1981次触摸手势。

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