Facial Expression Recognition Using a Large Out-of-Context Dataset

Elizabeth Tran, Michael B. Mayhew, Hyojin Kim, P. Karande, A. Kaplan
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引用次数: 6

Abstract

We develop a method for emotion recognition from facial imagery. This problem is challenging in part because of the subjectivity of ground truth labels and in part because of the relatively small size of existing labeled datasets. We use the FER+ dataset [8], a dataset with multiple emotion labels per image, in order to build an emotion recognition model that encompasses a full range of emotions. Since the amount of data in the FER+ dataset is limited, we explore the use of a much larger face dataset, MS-Celeb-1M [41], in conjunction with the FER+ dataset. Specific layers within an Inception-ResNet-v1 [13, 38] model trained for facial recognition are used for the emotion recognition problem. Thus, we leverage the MS-Celeb-1M dataset in addition to the FER+ dataset and experiment with different architectures to assess the overall performance of neural networks to recognize emotion using facial imagery.
基于大型非上下文数据集的面部表情识别
我们开发了一种基于面部图像的情感识别方法。这个问题是具有挑战性的,部分原因是地面真值标签的主观性,部分原因是现有标记数据集的规模相对较小。我们使用FER+数据集[8],每个图像具有多个情绪标签的数据集,以构建包含全范围情绪的情绪识别模型。由于FER+数据集中的数据量有限,我们探索了一个更大的人脸数据集MS-Celeb-1M[41]与FER+数据集结合使用。在Inception-ResNet-v1[13,38]模型中训练用于面部识别的特定层用于情感识别问题。因此,我们利用MS-Celeb-1M数据集和FER+数据集,并使用不同的架构进行实验,以评估神经网络使用面部图像识别情绪的整体性能。
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