Facial affect analysis remains a challenging task with its setting transitioned from lab-controlled to in-the-wild situations. In this paper, we present novel frameworks to handle the two challenges in the 4th Affective Behavior Analysis In-The-Wild (ABAW) competition: i) Multi-Task-Learning (MTL) Challenge and ii) Learning from Synthetic Data (LSD) Challenge. For MTL challenge, we adopt the SMM-EmotionNet with a better ensemble strategy of feature vectors. For LSD challenge, we propose respective methods to combat the problems of single labels, imbalanced distribution, fine-tuning limitations, and choice of model architectures. Experimental results on the official validation sets from the competition demonstrated that our proposed approaches outperformed baselines by a large margin. The code is available at https://github.com/sylyoung/ABAW4-HUST-ANT.
翻译:在本文中,我们提出新的框架,以应对第四期Wild(ABAW)女性行为分析(ABAW)竞赛中的两项挑战:一) 多任务学习(MTL)挑战,二)从合成数据(LSD)挑战中学习;关于MTL挑战,我们采用SMM-EmoveNet,采用更好的特征矢量组合战略;关于LSD挑战,我们提出了应对单一标签、分布不均、微调限制和模型结构选择等问题的各自方法。竞争中官方鉴定组的实验结果表明,我们提出的方法大大超越了基线。该代码可在https://github.com/sylyoung/ABAW4-Hust-ANT上查阅。