JSAI2021

Presentation information

Organized Session

Organized Session » OS-5

[3E2-OS-5b] グループインタラクションとAI(2/2)

Thu. Jun 10, 2021 11:00 AM - 12:40 PM Room E (OS room 3)

座長:岡田 将吾(北陸先端科学技術大学院大学)

11:00 AM - 11:20 AM

[3E2-OS-5b-01] Estimating Feedback Responses and the Intensity of Facial Expressions based on Multimodal Information

〇Ryosuke Ueno1, Tatuya Sakato2, Yukiko Nakano2 (1. Graduate School of Science and Technology, Seikei University, 2. Faculty of Science and Technology, Seikei University)

Keywords:facial expression, action unit, feedback response, multiparty communication, neural networks

Providing feedback to a speaker is an essential communication signal for maintaining a conversation. In addition to verbal feedback responses, facial expressions are also effective modalities to convey the listener's response to the speaker's utterances. Moreover, not only the type of facial expressions, but also the degree of intensity of the expression may influence the meaning of the specific feedback.
In this study, we propose a multimodal deep neural network model that predicts the intensity of facial expressions co-occurring with feedback responses. We collected 33 video-mediated conversations by groups of three people and obtained language, facial and audio data for each participant. We also annotated feedback responses and clustered their BERT-embedding expressions to classify feedback responses. In the proposed method, a decoder with attention mechanism for audio, visual, and language modalities produce the intensity for the 17 AUs frame by frame and a classifier of feedback labels were trained by multi-task learning.
In the evaluation of the prediction performance of the feedback label, there was a bias in the prediction performance depending on the category. For AU intensity prediction, the multi-task model had a smaller loss function value (loss) than the single-task model, indicating a better model.

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