Toward Smart Internet of Things (IoT) Devices: Exploring the Regions of Interest for Recognition of Facial Expressions using Eye-gaze Tracking

Abdallah S. Abdallah, L. Elliott, Daniel Donley
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引用次数: 3

Abstract

A significant portion of the internet of things (IoT) devices will become reliable products in our daily life if and only if they are equipped with strong human computer interaction (HCI) technologies, specifically visual interaction with users through affective computing. One of the major challenges faced in affective computing is recognizing facial expressions and the true emotions behind them. Despite numerous studies performed, current detection systems are ineffective at correctly identifying facial expressions with reliable accuracy, especially in case of negative expressions. Several research projects attempted to extract the recognition process that humans follow to identify facial expressions in order to replicate in smart machines without a significant success. This paper describes our interdisciplinary project whose goal is to extract and define the recognition process that humans follow when identifying the facial expressions of others. We monitor this process by identifying and analyzing the regions of interest participants look at when they are shown static emotions samples under a specific experimental setup. This paper reports the current status of data collection, experimental setup, and initial data visualization.
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迈向智能物联网(IoT)设备:探索使用眼球追踪识别面部表情的兴趣区域
当且仅当物联网(IoT)设备配备强大的人机交互(HCI)技术,特别是通过情感计算与用户进行视觉交互时,很大一部分物联网(IoT)设备将成为我们日常生活中可靠的产品。情感计算面临的主要挑战之一是识别面部表情及其背后的真实情绪。尽管进行了大量的研究,但目前的检测系统在正确准确地识别面部表情方面是无效的,尤其是在负面表情的情况下。几个研究项目试图提取人类识别面部表情的识别过程,以便在智能机器中复制,但没有取得重大成功。本文描述了我们的跨学科项目,其目标是提取和定义人类在识别他人面部表情时遵循的识别过程。我们通过识别和分析参与者在特定实验设置下看到静态情绪样本时所关注的兴趣区域来监控这一过程。本文报告了数据收集、实验设置和初步数据可视化的现状。
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