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Automatic expression spotting in videos
Authors:Matthew Shreve  Jesse BrizziSergiy Fefilatyev  Timur LuguevDmitry Goldgof  Sudeep Sarkar
Affiliation:Department of Computer Science and Engineering, University of South Florida, Tampa, FL, USA
Abstract:In this paper, we propose a novel solution for the problem of segmenting macro- and micro-expression frames (or retrieving the expression intervals) in video sequences, which is a prior step for many expression recognition algorithms. The proposed method exploits the non-rigid facial motion that occurs during facial expressions by capturing the optical strain corresponding to the elastic deformation of facial skin tissue. The method is capable of spotting both macro-expressions which are typically associated with expressed emotions and rapid micro- expressions which are typically associated with semi-suppressed macro-expressions. We test our algorithm on several datasets, including a newly released hour-long video with two subjects recorded in a natural setting that includes spontaneous facial expressions. We also report results on a dataset that contains 75 feigned macro-expressions and 37 feigned micro-expressions. We achieve over a 75% true positive rate with a 1% false positive rate for macro-expressions, and a nearly 80% true positive rate for spotting micro-expressions with a .3% false positive rate.
Keywords:Expression spotting  Macro-expressions  Micro-expressions
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