Facial expression recognition suffers under realworldconditions, especially on unseen subjects due to highinter-subject variations. To alleviate variations introduced bypersonal attributes and achieve better facial expression recognitionperformance, a novel identity-aware convolutional neuralnetwork (IACNN) is proposed. In particular, a CNN with a newarchitecture is employed as individual streams of a bi-streamidentity-aware network. An expression-sensitive contrastive lossis developed to measure the expression similarity to ensure thefeatures learned by the network are invariant to expressionvariations. More importantly, an identity-sensitive contrastiveloss is proposed to learn identity-related information from identitylabels to achieve identity-invariant expression recognition.Extensive experiments on three public databases including aspontaneous facial expression database have shown that theproposed IACNN achieves promising results in real world.
Chongsheng ZhangPengyou WangKe ChenJoni-Kristian Äm Är Äinen
Cheng JiangMd Rakibul HasanTom GedeonMd Zakir Hossain
Muhammad SohailGhulam AliJaved RashidIsrar AhmadSultan H. AlmotiriMohammed A. Al GhamdiArfan Ali NagraKhalid Masood
A. C. JAINSwati NigamRajiv Singh
Ved AgrawalChirag BambHarsh MataHarshal DhundeRamchand Hablani