Electronics Letters (Dec 2021)

Multi‐view facial action unit detection via deep feature enhancement

  • Chuangao Tang,
  • Cheng Lu,
  • Wenming Zheng,
  • Yuan Zong,
  • Sunan Li

DOI
https://doi.org/10.1049/ell2.12322
Journal volume & issue
Vol. 57, no. 25
pp. 970 – 972

Abstract

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Abstract Multi‐view facial action unit (AU) analysis has been a challenging research topic due to multiple disturbing variables, including subject identity biases, variational facial action unit intensities, facial occlusions and non‐frontal head‐poses. A deep feature enhancement (DFE) framework is presented to tackle some of these coupled complex disturbing variables for multi‐view facial action unit detection. The authors' DFE framework is a novel end‐to‐end three‐stage feature learning model with taking subject identity biases, dynamic facial changes and head‐pose into consideration. It contains three feature enhancement modules, including coarse‐grained local and holistic spatial feature learning (LHSF), spatio‐temporal feature learning (STF) and head‐pose feature disentanglement (FD). Experimental results show that the proposed method achieved state‐of‐the‐art recognition performance on the FERA2017 dataset. The code is released at http://aip.seu.edu.cn/cgtang/.

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