Emotion Recognition and Detection Methods: A Comprehensive Survey

Anvita Saxena, Ashish Khanna, Deepak Gupta
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引用次数: 66

Abstract

Human emotion recognition through artificial intelligence is one of the most popular research fields among researchers nowadays. The fields of Human Computer Interaction (HCI) and Affective Computing are being extensively used to sense human emotions. Humans generally use a lot of indirect and non-verbal means to convey their emotions. The presented exposition aims to provide an overall overview with the analysis of all the noteworthy emotion detection methods at a single location. To the best of our knowledge, this is the first attempt to outline all the emotion recognition models developed in the last decade. The paper is comprehended by expending more than hundred papers; a detailed analysis of the methodologies along with the datasets is carried out in the paper. The study revealed that emotion detection is predominantly carried out through four major methods, namely, facial expression recognition, physiological signals recognition, speech signals variation and text semantics on standard databases such as JAFFE, CK+, Berlin Emotional Database, SAVEE, etc. as well as self-generated databases. Generally seven basic emotions are recognized through these methods. Further, we have compared different methods employed for emotion detection in humans. The best results were obtained by using Stationary Wavelet Transform for Facial Emotion Recognition , Particle Swarm Optimization assisted Biogeography based optimization algorithms for emotion recognition through speech, Statistical features coupled with different methods for physiological signals, Rough set theory coupled with SVM for text semantics with respective accuracies of 98.83%,99.47%, 87.15%,87.02% . Overall, the method of Particle Swarm Optimization assisted Biogeography based optimization algorithms with an accuracy of 99.47% on BES dataset gave the best results.
情绪识别与检测方法综述
通过人工智能进行人类情感识别是当今研究人员最热门的研究领域之一。人机交互(HCI)和情感计算领域被广泛用于感知人类情感。人类通常使用许多间接和非语言的手段来传达他们的情感。本文的目的是提供一个整体概述,分析所有值得注意的情感检测方法在一个单一的位置。据我们所知,这是第一次尝试概述过去十年中发展起来的所有情感识别模型。这篇论文是用了一百多篇论文才理解的;本文对方法和数据集进行了详细的分析。研究发现,情绪检测主要通过面部表情识别、生理信号识别、语音信号变异和文本语义四种方法在JAFFE、CK+、Berlin Emotional Database、SAVEE等标准数据库以及自生成数据库上进行。一般来说,通过这些方法可以识别七种基本情绪。此外,我们还比较了用于人类情感检测的不同方法。其中,平稳小波变换用于人脸情绪识别、粒子群优化辅助生物地理优化算法用于语音情绪识别、统计特征与不同方法相结合用于生理信号识别、粗糙集理论与SVM相结合用于文本语义识别的准确率分别为98.83%、99.47%、87.15%、87.02%。总体而言,粒子群优化辅助生物地理学优化算法在BES数据集上的效果最好,准确率为99.47%。
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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