Is Everything Fine, Grandma? Acoustic and Linguistic Modeling for Robust Elderly Speech Emotion Recognition

Publication date

2020-10-25

Authors

Sogancioglu, GizemISNI 0000000493066008
Verkholyak, Oxana
Kaya, HeysemORCID 0000-0001-7947-5508ISNI 000000049289651X
Fedotov, Dmitrii
Cadee, Tobias
Salah, A.A.ORCID 0000-0001-6342-428XISNI 0000000091147032
Karpov, Alexey

Editors

Advisors

Supervisors

Document Type

Contribution to conference

License

Abstract

Acoustic and linguistic analysis for elderly emotion recognition is an under-studied and challenging research direction, but essential for the creation of digital assistants for the elderly, as well as unobtrusive telemonitoring of elderly in their residences for mental healthcare purposes. This paper presents our contribution to the INTERSPEECH 2020 Computational Paralinguistics Challenge (ComParE) - Elderly Emotion Sub-Challenge, which is comprised of two ternary classification tasks for arousal and valence recognition. We propose a bi-modal framework, where these tasks are modeled using state-of-the-art acoustic and linguistic features, respectively. In this study, we demonstrate that exploiting task-specific dictionaries and resources can boost the performance of linguistic models, when the amount of labeled data is small. Observing a high mismatch between development and test set performances of various models, we also propose alternative training and decision fusion strategies to better estimate and improve the generalization performance.

Keywords

machine learning, computational paralinguistics, speech processing, natural language processing, speech emotion recognition, human-computer interaction, sentiment analysis

Citation

Sogancioglu, G, Verkholyak, O, Kaya, H, Fedotov, D, Cadee, T, Salah, A A & Karpov, A 2020, 'Is Everything Fine, Grandma? Acoustic and Linguistic Modeling for Robust Elderly Speech Emotion Recognition', Paper presented at INTERSPEECH 2020, Shanghai, China, 25/10/20 - 29/10/20 pp. 2097-2101. https://doi.org/10.21437/Interspeech.2020-3160, conference