Faculty of Informatics, Burapha University, Chonburi 20131, Thailand.
Sensors (Basel). 2022 Jun 19;22(12):4633. doi: 10.3390/s22124633.
Wearing a facial mask is indispensable in the COVID-19 pandemic; however, it has tremendous effects on the performance of existing facial emotion recognition approaches. In this paper, we propose a feature vector technique comprising three main steps to recognize emotions from facial mask images. First, a synthetic mask is used to cover the facial input image. With only the upper part of the image showing, and including only the eyes, eyebrows, a portion of the bridge of the nose, and the forehead, the boundary and regional representation technique is applied. Second, a feature extraction technique based on our proposed rapid landmark detection method employing the infinity shape is utilized to flexibly extract a set of feature vectors that can effectively indicate the characteristics of the partially occluded masked face. Finally, those features, including the location of the detected landmarks and the Histograms of the Oriented Gradients, are brought into the classification process by adopting CNN and LSTM; the experimental results are then evaluated using images from the CK+ and RAF-DB data sets. As the result, our proposed method outperforms existing cutting-edge approaches and demonstrates better performance, achieving 99.30% and 95.58% accuracy on CK+ and RAF-DB, respectively.
在 COVID-19 大流行期间,佩戴口罩是必不可少的;然而,它对面部表情识别方法的性能有很大的影响。在本文中,我们提出了一种特征向量技术,包括三个主要步骤,从口罩图像中识别情绪。首先,使用合成口罩覆盖面部输入图像。仅显示图像的上半部分,包括眼睛、眉毛、部分鼻梁和额头,应用边界和区域表示技术。其次,利用我们提出的基于无限形状的快速地标检测方法的特征提取技术,灵活地提取一组能够有效表示部分遮挡口罩面部特征的特征向量。最后,将检测到的地标位置和方向梯度直方图等特征通过 CNN 和 LSTM 引入分类过程,然后使用 CK+和 RAF-DB 数据集的图像进行评估。结果表明,我们提出的方法优于现有的前沿方法,表现出更好的性能,在 CK+和 RAF-DB 数据集上的准确率分别达到 99.30%和 95.58%。