Exploring the Effect of Transfer Learning on Facial Expression Recognition using Photo-Reflective Sensors embedded into a Head-Mounted Display

Fumihiko Nakamura, M. Sugimoto
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Abstract

As one of the techniques to recognize head-mounted display (HMD) user’s facial expressions, the photo-reflective sensor (PRS) has been employed. Since the classification performance of PRS-based method is affected by rewearing an HMD and difference in facial geometry for each user, the user have to perform dataset collection for each wearing of an HMD to build a facial expression classifier. To tackle this issue, we investigate how transfer learning improve within-user and cross-user accuracy and reduce training data in the PRS-based facial expression recognition. We collected a dataset of five facial expressions (Neutral, Smile, Angry, Surprised, Sad) when participants wore the PRS-embedded HMD five times. Using the dataset, we evaluated facial expression classification accuracy using a neural network with/without fine tuning. Our result showed fine tuning improved the within-user and cross-user facial expression classification accuracy compared with non-fine-tuned classifier. Also, applying fine tuning to the classifier trained with the other participant dataset achieved higher classification accuracy than the non-fine-tuned classifier.
利用嵌入头戴式显示器的光反射传感器探索迁移学习对面部表情识别的影响
作为头戴式显示器(HMD)用户面部表情识别技术之一,光反射传感器(PRS)已被广泛应用。由于基于prs的方法的分类性能受到每个用户重新佩戴HMD和面部几何形状差异的影响,因此用户必须对每次佩戴HMD进行数据收集以构建面部表情分类器。为了解决这一问题,我们研究了迁移学习如何在基于prs的面部表情识别中提高用户内和跨用户的准确性,并减少训练数据。我们收集了五种面部表情的数据集(中性、微笑、愤怒、惊讶、悲伤),当参与者戴上嵌入prs的HMD五次时。使用该数据集,我们使用带/不带微调的神经网络评估面部表情分类精度。结果表明,与非微调分类器相比,微调提高了用户内和跨用户的面部表情分类准确率。此外,对使用其他参与者数据集训练的分类器进行微调可以获得比未微调的分类器更高的分类精度。
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