Blindfold Attention: Novel Mask Strategy for Facial Expression Recognition

Bo Fu, Yuanxin Mao, Shilin Fu, Yonggong Ren, Zhongxuan Luo
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引用次数: 1

Abstract

Facial Expression Recognition (FER) is a basic and crucial computer vision task of classifying emotional expressions from human faces images into various emotion categories such as happy, sad, surprised, scared, angry, etc. Recently, facial expression recognition based on deep learning has made great progress. However, no matter the weight initialization technology or the attention mechanism, the face recognition method based on deep learning hard to capture those visually insignificant but semantically important features. To aid above question, in this paper we present a novel Facial Expression Recognition training strategy consisting of two components: Memo Affinity Loss (MAL) and Mask Attention Fine Tuning (MAFT). MAL is a variant of center loss, which uses memory bank strategy as well as discriminative center. MAL widens the distance between different clusters and narrows the distance within each cluster. Therefore, the features extracted by CNN were comprehensive and independent, which produced a more robust model. MAFT is a strategy that blindfolds attention parts temporarily and forces the model to learn from other important regions of the input image. It's not only an augmenting technique, but also a novel fine-tuning approach. As we know, we are the first to apply the mask strategy to the attention part and use this strategy to fine-tune the models. Finally, to implement our ideas, we constructed a new network named Architecture Attention ResNet based on ResNet-18. Our methods are conceptually and practically simple, but receives superior results on popular public facial expression recognition benchmarks with 88.75% on RAF-DB, 65.17% on AffectNet-7, 60.72% on AffectNet-8. The code will open source soon.
蒙眼注意:面部表情识别的新面具策略
面部表情识别(FER)是一项基本而关键的计算机视觉任务,它将人脸图像中的情绪表情分类为快乐、悲伤、惊讶、恐惧、愤怒等各种情绪类别。近年来,基于深度学习的面部表情识别取得了很大进展。然而,无论是权重初始化技术还是注意机制,基于深度学习的人脸识别方法都难以捕捉到那些视觉上不显著但语义上重要的特征。为了解决上述问题,本文提出了一种新的面部表情识别训练策略,该策略由两个部分组成:备忘录亲和损失(MAL)和面具注意微调(MAFT)。MAL是中心丢失的一种变体,它使用了记忆库策略和判别中心。MAL扩大了不同聚类之间的距离,缩小了每个聚类内部的距离。因此,CNN提取的特征是全面的和独立的,产生了一个更鲁棒的模型。MAFT是一种暂时蒙蔽注意力部分的策略,迫使模型从输入图像的其他重要区域学习。这不仅是一种增强技术,也是一种新颖的微调方法。正如我们所知,我们是第一个将遮罩策略应用于注意力部分并使用该策略对模型进行微调的人。最后,为了实现我们的想法,我们在ResNet-18的基础上构建了一个名为Architecture Attention ResNet的新网络。我们的方法在概念和实践上都很简单,但在流行的公共面部表情识别基准上获得了更好的结果,RAF-DB的识别率为88.75%,AffectNet-7的识别率为65.17%,AffectNet-8的识别率为60.72%。代码将很快开放源代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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