Affective computing plays a key role in human-computer interactions, entertainment, teaching, safe driving, and multimedia integration. Major breakthroughs have been made recently in the areas of affective computing (i.e., emotion recognition and sentiment analysis). Affective computing is realized based on unimodal or multimodal data, primarily consisting of physical information (e.g., textual, audio, and visual data) and physiological signals (e.g., EEG and ECG signals). Physical-based affect recognition caters to more researchers due to multiple public databases. However, it is hard to reveal one's inner emotion hidden purposely from facial expressions, audio tones, body gestures, etc. Physiological signals can generate more precise and reliable emotional results; yet, the difficulty in acquiring physiological signals also hinders their practical application. Thus, the fusion of physical information and physiological signals can provide useful features of emotional states and lead to higher accuracy. Instead of focusing on one specific field of affective analysis, we systematically review recent advances in the affective computing, and taxonomize unimodal affect recognition as well as multimodal affective analysis. Firstly, we introduce two typical emotion models followed by commonly used databases for affective computing. Next, we survey and taxonomize state-of-the-art unimodal affect recognition and multimodal affective analysis in terms of their detailed architectures and performances. Finally, we discuss some important aspects on affective computing and their applications and conclude this review with an indication of the most promising future directions, such as the establishment of baseline dataset, fusion strategies for multimodal affective analysis, and unsupervised learning models.
翻译:视觉计算在人体计算机互动、娱乐、教学、安全驾驶和多媒体整合方面发挥着关键作用。最近,在感官计算(即情感识别和情绪分析)领域取得了重大突破。根据单式或多式数据,主要是物理信息(如文字、听觉和视觉数据)和生理信号(如EEG和ECG信号)组成的单式或多式数据,实现情感计算,主要是物理信息(如文字、听觉和视觉数据)和生理信号(如EEEG和ECG信号),基于物理的影响识别满足了多个公共数据库的更多研究人员的需要。然而,很难从面部表达、音频调、体型动作等领域显示隐藏的内在情感。生理信号可以产生更准确和可靠的情感结果;然而,获取生理信号方面的困难也妨碍了其实际应用。因此,物理信息和生理信号的融合可以提供情感状态的有用特征,导致更高的准确性。我们系统审查感官计算的最新进展,以及将非情绪化的感官认识作为现代感官感觉分析的基线、身体表现等等。我们使用两种典型的模型来最终分析,我们使用两种典型的感官学模型来分析,用来分析。我们使用两种典型的感官学分析,最后用来分析,用来分析。我们使用两种典型的感官学状态分析,进行这种分析,用来分析,最后的模拟分析。我们使用两种典型的模拟分析,用来分析。