ETRO VUB
About ETRO  |  News  |  Events  |  Vacancies  |  Contact  
Home Research Education Industry Publications About ETRO

ETRO Publications

Full Details

Journal Publication

Continuous affect recognition with weakly supervised learning

This publication appears in: Multimedia Tools and Applications

Authors: E. Pei, D. Jiang, M. Perez Gonzalez and H. Sahli

Volume: 78

Issue: 14

Pages: 19387-19412

Publication Date: Jul. 2019


Abstract:

Recognizing a person’s affective state from audio-visual signals is an essential capability for intelligent interaction. Insufficient training data and the unreliable labels of affective dimensions (e.g., valence and arousal) are two major challenges in continuous affect recognition. In this paper, we propose a weakly supervised learning approach based on hybrid deep neural network and bidirectional long short-term memory recurrent neural network (DNN-BLSTM). It firstly maps the audio/visual features into a more discriminative space via the powerful modelling capacities of DNN, then models the temporal dynamics of affect via BLSTM. To reduce the negative impact of the unreliable labels, we utilize a temporal label (TL) along with a robust loss function (RL) for incorporating weak supervision into the learning process of the DNN-BLSTM model. Therefore, the proposed method not only has a simpler structure than the deep BLSTM model in He et al. (24) which requires more training data, but also is robust to noisy and unreliable labels. Single modal and multimodal affect recognition experiments have been carried out on the RECOLA dataset. Single modal recognition results show that the proposed method with TL and RL obtains remarkable improvements on both arousal and valence in terms of concordance correlation coefficient (CCC), while multimodal recognition results show that with less feature streams, our proposed approach obtains better or comparable results with the state-of-the-art methods.

Other Reference Styles
Current ETRO Authors

Prof. Hichem Sahli

+32 (0)02 629 291

hsahli@etrovub.be

more info

Other Publications

• Journal publications

IRIS • LAMI • AVSP

• Conference publications

IRIS • LAMI • AVSP

• Book publications

IRIS • LAMI • AVSP

• Reports

IRIS • LAMI • AVSP

• Laymen publications

IRIS • LAMI • AVSP

• PhD Theses

Search ETRO Publications

Author:

Keyword:  

Type:








- Contact person

- IRIS

- AVSP

- LAMI

- Contact person

- Thesis proposals

- ETRO Courses

- Contact person

- Spin-offs

- Know How

- Journals

- Conferences

- Books

- Vacancies

- News

- Events

- Press

Contact

ETRO Department

info@etro.vub.ac.be

Tel: +32 2 629 29 30

©2024 • Vrije Universiteit Brussel • ETRO Dept. • Pleinlaan 2 • 1050 Brussels • Tel: +32 2 629 2930 (secretariat) • Fax: +32 2 629 2883 • WebmasterDisclaimer