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Personalized models for facial emotion recognition through transfer learning

机译:通过转移学习的面部情感识别的个性化模型

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摘要

Emotions represent a key aspect of human life and behavior. In recent years, automatic recognition of emotions has become an important component in the fields of affective computing and human-machine interaction. Among many physiological and kinematic signals that could be used to recognize emotions, acquiring facial expression images is one of the most natural and inexpensive approaches. The creation of a generalized, inter-subject, model for emotion recognition from facial expression is still a challenge, due to anatomical, cultural and environmental differences. On the other hand, using traditional machine learning approaches to create a subject-customized, personal, model would require a large dataset of labelled samples. For these reasons, in this work, we propose the use of transfer learning to produce subject-specific models for extracting the emotional content of facial images in the valence/ arousal dimensions. Transfer learning allows us to reuse the knowledge assimilated from a large multi-subject dataset by a deep-convolutional neural network and employ the feature extraction capability in the single subject scenario. In this way, it is possible to reduce the amount of labelled data necessary to train a personalized model, with respect to relying just on subjective data. Our results suggest that generalized transferred knowledge, in conjunction with a small amount of personal data, is sufficient to obtain high recognition performances and improvement with respect to both a generalized model and personal models. For both valence and arousal dimensions, quite good performances were obtained (RMSE = 0.09 and RMSE = 0.1 for valence and arousal, respectively). Overall results suggested that both the transferred knowledge and the personal data helped in achieving this improvement, even though they alternated in providing the main contribution. Moreover, in this task, we observed that the benefits of transferring knowledge are so remarkable that no specific active or passive sampling techniques are needed for selecting images to be labelled.
机译:情绪代表人类生活和行为的关键方面。近年来,自动识别情绪已成为情感计算和人机互动领域的重要组成部分。在可用于识别情绪的许多生理和运动信号中,获得面部表情图像是最自然和最廉洁的方法之一。由于解剖学,文化和环境差异,在面部表情的广义互及的情感识别模型的创建仍然是一项挑战。另一方面,使用传统的机器学习方法来创建主题定制,个人,模型需要一个标记样本的大型数据集。出于这些原因,在这项工作中,我们提出了使用转移学习来产生专用模型,用于提取价值/唤起维度中面部图像的情绪含量。转移学习允许我们通过深卷积神经网络重用从大型多对象数据集中同化的知识,并在单个主题场景中采用特征提取功能。以这种方式,可以减少训练个性化模型所需的标记数据的量,了解依赖于主观数据。我们的结果表明,与少量个人数据相结合的广义转移知识足以获得高识别性能和对普遍模型和个人模型的改进。对于价值和唤起尺寸,获得了相当良好的性能(RMSE = 0.09和RMSE = 0.1分别用于价和唤醒)。总体结果表明,即使他们在提供主要贡献方面也有助于实现这一改进的转移知识和个人数据。此外,在这项任务中,我们观察到,转移知识的好处是如此显着的,因为没有所需的图像不需要特定的主动或被动采样技术。

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