Despite their continued popularity, categorical approaches to affect recognition have limitations, especially in real-life situations. Dimensional models of affect offer important advantages for the recognition of subtle expressions and more fine-grained analysis. We introduce a simple but effective facial expression analysis (FEA) system for dimensional affect, solely based on geometric features and Partial Least Squares (PLS) regression. The system jointly learns to estimate Arousal and Valence ratings from a set of facial images. The proposed approach is robust, efficient, and exhibits comparable performance to contemporary deep learning models, while requiring a fraction of the computational resources.
翻译:影响认知的绝对方法尽管继续受到欢迎,但有其局限性,特别是在现实生活中。影响度模型为识别微妙的表达方式和更细微的分析提供了重要优势。我们引入了简单而有效的面部表达分析系统(FEA),用于维度影响,仅以几何特征和部分最小方(PLS)回归为基础。这个系统共同学习从一组面部图像中估算振奋和价值评级。拟议的方法是稳健、高效和与当代深层学习模型相似的实绩,同时需要部分计算资源。