Capturing Long-Term Temporal Dependencies with Convolutional Networks for Continuous Emotion Recognition

Soheil Khorram, Zakaria Aldeneh, Dimitrios Dimitriadis, Melvin McInnis, Emily Mower Provost


The goal of continuous emotion recognition is to assign an emotion value to every frame in a sequence of acoustic features. We show that incorporating long-term temporal dependencies is critical for continuous emotion recognition tasks. To this end, we first investigate architectures that use dilated convolutions. We show that even though such architectures outperform previously reported systems, the output signals produced from such architectures undergo erratic changes between consecutive time steps. This is inconsistent with the slow moving ground-truth emotion labels that are obtained from human annotators. To deal with this problem, we model a downsampled version of the input signal and then generate the output signal through upsampling. Not only does the resulting downsampling/upsampling network achieve good performance, it also generates smooth output trajectories. Our method yields the best known audio-only performance on the RECOLA dataset.


 DOI: 10.21437/Interspeech.2017-548

Cite as: Khorram, S., Aldeneh, Z., Dimitriadis, D., McInnis, M., Provost, E.M. (2017) Capturing Long-Term Temporal Dependencies with Convolutional Networks for Continuous Emotion Recognition. Proc. Interspeech 2017, 1253-1257, DOI: 10.21437/Interspeech.2017-548.


@inproceedings{Khorram2017,
  author={Soheil Khorram and Zakaria Aldeneh and Dimitrios Dimitriadis and Melvin McInnis and Emily Mower Provost},
  title={Capturing Long-Term Temporal Dependencies with Convolutional Networks for Continuous Emotion Recognition},
  year=2017,
  booktitle={Proc. Interspeech 2017},
  pages={1253--1257},
  doi={10.21437/Interspeech.2017-548},
  url={http://dx.doi.org/10.21437/Interspeech.2017-548}
}