通过皮肤电活动信号预测观众对电影内容的反应

Fernando Silveira, Brian Eriksson, Anmol Sheth, A. Sheppard
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引用次数: 51

摘要

评估精细用户反应的能力在广告、内容创作、推荐和心理学研究中都有应用。不幸的是,目前的方法,如焦点小组和受众调查,在规模和范围上都是有限的。在本文中,我们提出了一种结合生物识别传感和分析方法,以利用观众规模的皮肤电活动(EDA)数据来评估用户对视频的反应。我们提供了对视频刺激的时间生理反应如何建模的详细描述,以及在不受控制的现实环境中首次进行的观众规模EDA组实验。我们的研究提供了分析EDA、不同时间特征的有效性和受众群体动态的技术见解。我们的实验证明了对特定电影进行分级的能力,准确率超过70%。本研究的结果表明,在不受控制的环境中,使用微创传感方式评估群体情绪反应的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting audience responses to movie content from electro-dermal activity signals
The ability to assess fine-scale user responses has applications in advertising, content creation, recommendation, and psychology research. Unfortunately, current approaches, such as focus groups and audience surveys, are limited in size and scope. In this paper, we propose a combined biometric sensing and analysis methodology to leverage audience-scale electro-dermal activity (EDA) data for the purpose of evaluating user responses to video. We provide detailed characterization of how temporal physiological responses to video stimulus can be modeled, along with first-of-its-kind audience-scale EDA group experiments in uncontrolled real-world environments. Our study provides insights into the techniques used to analyze EDA, the effectiveness of the different temporal features, and group dynamics of audiences. Our experiments demonstrate the ability to classify movie ratings with accuracy of over 70% on specific films. Results of this study suggest the ability to assess emotional reactions of groups using minimally invasive sensing modalities in uncontrolled environments.
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