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Affect Expression Behaviour Analysis in the Wild using Spatio-Channel Attention and Complementary Context Information (2009.14440v2)

Published 29 Sep 2020 in cs.CV and cs.HC

Abstract: Facial expression recognition(FER) in the wild is crucial for building reliable human-computer interactive systems. However, current FER systems fail to perform well under various natural and un-controlled conditions. This report presents attention based framework used in our submission to expression recognition track of the Affective Behaviour Analysis in-the-wild (ABAW) 2020 competition. Spatial-channel attention net(SCAN) is used to extract local and global attentive features without seeking any information from landmark detectors. SCAN is complemented by a complementary context information(CCI) branch which uses efficient channel attention(ECA) to enhance the relevance of features. The performance of the model is validated on challenging Aff-Wild2 dataset for categorical expression classification.

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Authors (2)
  1. Darshan Gera (15 papers)
  2. S Balasubramanian (12 papers)
Citations (20)

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