Multimodal Spontaneous Emotion Corpus for Human Behavior Analysis

Zheng Zhang, J. Girard, Yue Wu, Xing Zhang, Peng Liu, U. Ciftci, Shaun J. Canavan, M. Reale, Andy Horowitz, Huiyuan Yang, J. Cohn, Q. Ji, L. Yin
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引用次数: 299

Abstract

Emotion is expressed in multiple modalities, yet most research has considered at most one or two. This stems in part from the lack of large, diverse, well-annotated, multimodal databases with which to develop and test algorithms. We present a well-annotated, multimodal, multidimensional spontaneous emotion corpus of 140 participants. Emotion inductions were highly varied. Data were acquired from a variety of sensors of the face that included high-resolution 3D dynamic imaging, high-resolution 2D video, and thermal (infrared) sensing, and contact physiological sensors that included electrical conductivity of the skin, respiration, blood pressure, and heart rate. Facial expression was annotated for both the occurrence and intensity of facial action units from 2D video by experts in the Facial Action Coding System (FACS). The corpus further includes derived features from 3D, 2D, and IR (infrared) sensors and baseline results for facial expression and action unit detection. The entire corpus will be made available to the research community.
用于人类行为分析的多模态自发情绪语料库
情绪有多种表达方式,但大多数研究最多只考虑了一种或两种。这部分源于缺乏大型的、多样化的、注释良好的、多模式的数据库来开发和测试算法。我们提出了一个140名参与者的良好注释,多模态,多维自发情绪语料库。情绪感应是高度多样化的。数据来自面部的各种传感器,包括高分辨率3D动态成像、高分辨率2D视频和热(红外)传感,以及接触生理传感器,包括皮肤电导率、呼吸、血压和心率。面部表情由专家在面部动作编码系统(FACS)中对2D视频中面部动作单元的出现次数和强度进行标注。该语料库还包括来自3D、2D和IR(红外)传感器的衍生特征,以及用于面部表情和动作单元检测的基线结果。整个语料库将提供给研究界。
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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