| Literature DB >> 14587550 |
Jeffrey F Cohn1, Jing Xiao, Tsuyoshi Moriyama, Zara Ambadar, Takeo Kanade.
Abstract
Previous research in automatic facial expression recognition has been limited to recognition of gross expression categories (e.g., joy or anger) in posed facial behavior under well-controlled conditions (e.g., frontal pose and minimal out-of-plane head motion). We have developed a system that detects a discrete and important facial action (e.g., eye blinking) in spontaneously occurring facial behavior that has been measured with a nonfrontal pose, moderate out-of-plane head motion, and occlusion. The system recovers three-dimensional motion parameters, stabilizes facial regions, extracts motion and appearance information, and recognizes discrete facial actions in spontaneous facial behavior. We tested the system in video data from a two-person interview. The 10 subjects were ethnically diverse, action units occurred during speech, and out-of-plane motion and occlusion from head motion and glasses were common. The video data were originally collected to answer substantive questions in psychology and represent a substantial challenge to automated action unit recognition. In analysis of blinks, the system achieved 98% accuracy.Entities:
Mesh:
Year: 2003 PMID: 14587550 DOI: 10.3758/bf03195519
Source DB: PubMed Journal: Behav Res Methods Instrum Comput ISSN: 0743-3808