Teaching Pepper Robot to Recognize Emotions of Traumatic Brain Injured Patients Using Deep Neural Networks

Chaudhary Muhammad Aqdus Ilyas, Viktor Schmuck, M. A. Haque, Kamal Nasrollahi, M. Rehm, T. Moeslund
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引用次数: 6

Abstract

Social signal extraction from the facial analysis is a popular research area in human-robot interaction. However, recognition of emotional signals from Traumatic Brain Injured (TBI) patients with the help of robots and non-intrusive sensors is yet to be explored. Existing robots have limited abilities to automatically identify human emotions and respond accordingly. Their interaction with TBI patients could be even more challenging and complex due to unique, unusual and diverse ways of expressing their emotions. To tackle the disparity in a TBI patient’s Facial Expressions (FEs), a specialized deep-trained model for automatic detection of TBI patients’ emotions and FE (TBI-FER model) is designed, for robot-assisted rehabilitation activities. In addition, the Pepper robot’s built-in model for FE is investigated on TBI patients as well as on healthy people. Variance in their emotional expressions is determined by comparative studies. It is observed that the customized trained system is highly essential for the deployment of Pepper robot as a Socially Assistive Robot (SAR).
用深度神经网络教辣椒机器人识别创伤性脑损伤患者情绪
从人脸分析中提取社会信号是人机交互领域的一个研究热点。然而,在机器人和非侵入式传感器的帮助下识别创伤性脑损伤(TBI)患者的情绪信号仍有待探索。现有的机器人在自动识别人类情绪并做出相应反应方面的能力有限。他们与TBI患者的互动可能更具挑战性和复杂性,因为他们表达情绪的方式独特、不寻常和多样化。为了解决脑损伤患者面部表情的差异,设计了一种专门用于脑损伤患者情绪和面部表情自动检测的深度训练模型(TBI- fer模型),用于机器人辅助康复活动。此外,Pepper机器人内置的FE模型在脑外伤患者和健康人身上进行了研究。他们情绪表达的差异是通过比较研究确定的。研究发现,定制化的训练系统对于Pepper机器人作为社会辅助机器人(SAR)的部署至关重要。
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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