Progressive neural networks for transfer learning in emotion recognition

J Gideon, S Khorram, Z Aldeneh, D Dimitriadis… - arXiv preprint arXiv …, 2017 - arxiv.org
arXiv preprint arXiv:1706.03256, 2017arxiv.org
Many paralinguistic tasks are closely related and thus representations learned in one
domain can be leveraged for another. In this paper, we investigate how knowledge can be
transferred between three paralinguistic tasks: speaker, emotion, and gender recognition.
Further, we extend this problem to cross-dataset tasks, asking how knowledge captured in
one emotion dataset can be transferred to another. We focus on progressive neural
networks and compare these networks to the conventional deep learning method of pre …
Many paralinguistic tasks are closely related and thus representations learned in one domain can be leveraged for another. In this paper, we investigate how knowledge can be transferred between three paralinguistic tasks: speaker, emotion, and gender recognition. Further, we extend this problem to cross-dataset tasks, asking how knowledge captured in one emotion dataset can be transferred to another. We focus on progressive neural networks and compare these networks to the conventional deep learning method of pre-training and fine-tuning. Progressive neural networks provide a way to transfer knowledge and avoid the forgetting effect present when pre-training neural networks on different tasks. Our experiments demonstrate that: (1) emotion recognition can benefit from using representations originally learned for different paralinguistic tasks and (2) transfer learning can effectively leverage additional datasets to improve the performance of emotion recognition systems.
arxiv.org
以上显示的是最相近的搜索结果。 查看全部搜索结果