面部表情
计算机科学
地标
任务(项目管理)
背景(考古学)
人工智能
支持向量机
人际交往
数据库
机器学习
心理学
沟通
生物
古生物学
经济
管理
作者
Jeffrey M. Girard,Wen-Sheng Chu,László A. Jeni,Jeffrey F. Cohn
摘要
Despite the important role that facial expressions play in interpersonal communication and our knowledge that interpersonal behavior is influenced by social context, no currently available facial expression database includes multiple interacting participants. The Sayette Group Formation Task (GFT) database addresses the need for well-annotated video of multiple participants during unscripted interactions. The database includes 172,800 video frames from 96 participants in 32 three-person groups. To aid in the development of automated facial expression analysis systems, GFT includes expert annotations of FACS occurrence and intensity, facial landmark tracking, and baseline results for linear SVM, deep learning, active patch learning, and personalized classification. Baseline performance is quantified and compared using identical partitioning and a variety of metrics (including means and confidence intervals). The highest performance scores were found for the deep learning and active patch learning methods. Learn more at http://osf.io/7wcyz.
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