By utilizing label distribution learning, a probability distribution is assigned for a facial image to express a compound emotion, which effectively improves the problem of label uncertainties and noises occurred in one-hot labels. In practice, it is observed that correlations among emotions are inherently different, such as surprised and happy emotions are more possibly synchronized than surprised and neutral. It indicates the correlation may be crucial for obtaining a reliable label distribution. Based on this, we propose a new method that amends the label distribution of each facial image by leveraging correlations among expressions in the semantic space. Inspired by inherently diverse correlations among word2vecs, the topological information among facial expressions is firstly explored in the semantic space, and each image is embedded into the semantic space. Specially, a class-relation graph is constructed to transfer the semantic correlation among expressions into the task space. By comparing semantic and task class-relation graphs of each image, the confidence of its label distribution is evaluated. Based on the confidence, the label distribution is amended by enhancing samples with higher confidence and weakening samples with lower confidence. Experimental results demonstrate the proposed method is more effective than compared state-of-the-art methods.
翻译:通过使用标签分布学习,为面部图像分配了一种概率分布,以表达复合情感,这有效地改善了单热标签标签中的标签不确定性和噪音问题。在实践中,人们观察到,情绪之间的相互关联本质上是不同的,例如惊讶和快乐的情绪比惊讶和中性更可能同步。它表明,对于获得可靠的标签分布来说,相关性可能是至关重要的。基于这一点,我们建议了一种新的方法,通过利用语义空间表达方式的相互关系来修正每个面部图像的标签分布。由于单词2vecs之间固有的不同关联,在单热标签标签中出现的不确定和噪音问题得到了有效改善。在语义空间中首先探讨了面部的表情信息,每个图像都嵌入了语义空间。特别是,为将表达方式之间的语义相关性转换到任务空间,构建了一种等级关系图,以将每种图像的语义和任务类别关系图进行比较,从而评估其标签分布的可信度。基于信任度,通过提高样本的可信度和削弱样本,对标签分布进行了修正。实验结果表明,拟议的方法比州的方法更有效。