使用面部表情和深度学习的智能电子疗法

God's Gift G. Uzor, Hima Vadapalli
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引用次数: 0

摘要

情商在多个领域都有应用,研究人员目前正在探索用计算机来展示这种智能的可能性。研究人类的面部表情,根据他们在特定时间进行的活动,可以帮助改善人类与计算机之间的互动,特别是在数字化社会时代。沟通渠道包括声音、肢体动作和面部表情。身体手势和面部表情作为一种交流手段,被认为是无意识或自愿获得的,以强调可能无法通过声音方式明确表达的情绪。面部表情是人类在情感交流中常用的非语言视觉线索之一。面部表情作为一种评估情绪的渠道,在电子学习、在线营销和电子治疗等许多应用中都很有用。电子治疗被认为是由保健专业人员通过电子媒介提供心理健康服务。碰巧有一系列的挑战可以促使通过电子渠道进行治疗。本研究探索了一种工具的开发,该工具可以在电子治疗过程中利用患者的面部表情来促进对患者情绪的评估。除了评估面部表情之外,还提供了一种媒介来评估面部表情,并产生可供治疗师使用的反馈。面部表情估计和反馈生成模型使用深度学习和迁移学习技术。最初的研究是使用从KDEF和JAFFE数据库获得的表达样本进行的。结果表明,KDEF和JAFFE数据库图像的面部表情分类准确率分别为74.9%和90.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smartening E-therapy using Facial Expressions and Deep Learning
Emotional intelligence finds its application in several fields, and researchers are currently looking to explore the possibility for computers to demonstrate such intelligence. Examining human facial expressions, subject to the activities they carry out at certain times can help improve interactions between humans and computers especially in the era of a digitized society. Communication channels include vocal, body gestures, and facial expressions. Body gestures and facial expressions, as a means of communication, are known to be acquired either involuntarily or voluntarily to lay emphasis on emotions that may not be explicitly expressed via vocal means. Facial expressions are one of the common non-verbal visual cues used by humans in communicating emotions. Facial expressions as a channel to estimate emotions is useful in many applications such as e-learning, online marketing, and e-therapy. E-therapy is regarded as having a healthcare professional to provide mental health services via an electronic medium. There happens to be a range of challenges that could prompt therapy to be administered via electronic channels. This study explores the development of a tool that can facilitate the evaluation of a patient's emotion using their facial expressions during an e-therapy session. Further to evaluating facial expressions, there is a medium provided to estimate the expressions and generate a feedback that can be used by the therapist. Models for facial expression estimation and feedback generation uses deep learning and transfer learning techniques. The initial study was carried out using expression samples obtained from the KDEF and JAFFE databases. The results obtained show a 74.9% and 90.9% accuracy in facial expression classification of images from KDEF and JAFFE databases respectively.
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