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Accredited SCIE SCOPUS
Facial Action Unit Detection with Multilayer Fused Multi-Task and Multi-Label Deep Learning Network
( Jun He ) , ( Dongliang Li ) , ( Sun Bo ) , ( Lejun Yu )
UCI I410-ECN-0102-2021-500-000670407

Facial action units (AUs) have recently drawn increased attention because they can be used to recognize facial expressions. A variety of methods have been designed for frontal-view AU detection, but few have been able to handle multi-view face images. In this paper we propose a method for multi-view facial AU detection using a fused multilayer, multi-task, and multi-label deep learning network. The network can complete two tasks: AU detection and facial view detection. AU detection is a multi-label problem and facial view detection is a single-label problem. A residual network and multilayer fusion are applied to obtain more representative features. Our method is effective and performs well. The F1 score on FERA 2017 is 13.1% higher than the baseline. The facial view recognition accuracy is 0.991. This shows that our multi-task, multi-label model could achieve good performance on the two tasks.

1. Introduction
2. Related Work
3. Method
4. Experiment
5. Conclusion
References
[자료제공 : 네이버학술정보]
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