CVOct 30, 2020

Pose-based Body Language Recognition for Emotion and Psychiatric Symptom Interpretation

arXiv:2011.00043v127 citations
Originality Incremental advance
AI Analysis

This work addresses emotion and psychiatric symptom interpretation for healthcare applications, but it is incremental as it builds on existing pose-based and temporal network approaches.

The authors tackled automated emotion and psychiatric symptom recognition from body language in RGB videos, achieving superior performance on the URMC dataset compared to other methods.

Inspired by the human ability to infer emotions from body language, we propose an automated framework for body language based emotion recognition starting from regular RGB videos. In collaboration with psychologists, we further extend the framework for psychiatric symptom prediction. Because a specific application domain of the proposed framework may only supply a limited amount of data, the framework is designed to work on a small training set and possess a good transferability. The proposed system in the first stage generates sequences of body language predictions based on human poses estimated from input videos. In the second stage, the predicted sequences are fed into a temporal network for emotion interpretation and psychiatric symptom prediction. We first validate the accuracy and transferability of the proposed body language recognition method on several public action recognition datasets. We then evaluate the framework on a proposed URMC dataset, which consists of conversations between a standardized patient and a behavioral health professional, along with expert annotations of body language, emotions, and potential psychiatric symptoms. The proposed framework outperforms other methods on the URMC dataset.

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