Facial Expression Recognition(FER) is one of the most important topic in Human-Computer interactions(HCI). In this work we report details and experimental results about a facial expression recognition method based on state-of-the-art methods. We fine-tuned a SeNet deep learning architecture pre-trained on the well-known VGGFace2 dataset, on the AffWild2 facial expression recognition dataset. The main goal of this work is to define a baseline for a novel method we are going to propose in the near future. This paper is also required by the Affective Behavior Analysis in-the-wild (ABAW) competition in order to evaluate on the test set this approach. The results reported here are on the validation set and are related on the Expression Challenge part (seven basic emotion recognition) of the competition. We will update them as soon as the actual results on the test set will be published on the leaderboard.
翻译:显性表现识别(FER)是人类-计算机互动中最重要的主题之一。 在这项工作中,我们报告了基于最新技术方法的面部表达识别方法的细节和实验结果。我们微调了SeNet深层学习结构,在众所周知的 VGGFace2 数据集上,在AffWirld2 面部表达识别数据集上预先培训。 这项工作的主要目标是为我们近期内将要提出的一种新方法确定基线。 本文也是Wild (ABAW) Affective Behavior 分析(ABAW) 竞赛要求的, 以便评估所设定的测试方法。 本文中报告的结果是在验证数据集上, 与竞争的表情挑战部分( 七种基本情感识别) 相关。 我们将在测试集的实际结果公布在头板上时立即更新这些结果。