Art and Design / CDCST / Volume 1 / Issue 2 / DOI: 10.61369/CDCST.8001
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探索情绪护肤:神经美容产品的多元化测量技术

梦洁 吴 智健 黄 蕾 高 纯萍 姚 文强 林
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1 上海盛评检测技术有限公司, 上海盛评检测技术有限公司
CDCST 2024 , 1(2), 94–99;
Published: 25 November 2024
© 2024 by the Author. Licensee Art and Design, USA. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution -Noncommercial 4.0 International License (CC BY-NC 4.0) ( https://creativecommons.org/licenses/by-nc/4.0/ )
Abstract

情绪护肤领域专注于开发能够提升情绪和幸福感的化妆品和个人护理产品。神经美容作为其科学基础,探讨了这些产品如何通过影响神经系统来产生效果。文章综述了评估情绪改善效果的三种主要测量方法:心理学测量、生理学测量和外显性行为测量。心理学测量通过心理学量表来评估个体的心理特征、态度、情绪和行为等方面的数据。生理学测量通过监测脑电、皮肤温度、心率、皮电活动等生理参数,提供了情绪变化的客观指标。外显性行为测量则关注情绪的外在表现,通过面部表情识别和眼动追踪技术来评估情绪反应。尽管这些方法在情绪护肤领域的应用前景广阔,但它们在实际应用中仍面临技术挑战和操作限制。未来的研究需要解决这些挑战,发展更高效、便捷的情绪监测技术,以促进情绪护肤产品的科学评价和市场发展。

Keywords
情绪护肤
神经美容
脑电图
面部表情识别
生理测量
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China Daily Chemical Science Technology, Electronic ISSN: 2997-710X Print ISSN: 2997-7096, Published by Art and Design