4.7 Article

Behavioral and Physiological Signals-Based Deep Multimodal Approach for Mobile Emotion Recognition

Journal

IEEE TRANSACTIONS ON AFFECTIVE COMPUTING
Volume 14, Issue 2, Pages 1082-1097

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TAFFC.2021.3100868

Keywords

Emotion recognition; Feature extraction; Sensors; Physiology; Biomedical monitoring; Wearable computers; Visualization; mobile and wearable devices; behavioral signals; physiological signals; attention-based LSTM

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This paper proposes a novel attention-based LSTM system that combines sensors from a smartphone and a wristband to accurately determine user's emotional states. The system achieved an average accuracy of 89.2% for binary positive and negative emotion classification in a user study.
With the rapid development of mobile and wearable devices, it is increasingly possible to access users' affective data in a more unobtrusive manner. On this basis, researchers have proposed various systems to recognize user's emotional states. However, most of these studies rely on traditional machine learning techniques and a limited number of signals, leading to systems that either do not generalize well or would frequently lack sufficient information for emotion detection in realistic scenarios. In this paper, we propose a novel attention-based LSTM system that uses a combination of sensors from a smartphone (front camera, microphone, touch panel) and a wristband (photoplethysmography, electrodermal activity, and infrared thermopile sensor) to accurately determine user's emotional states. We evaluated the proposed system by conducting a user study with 45 participants. Using collected behavioral (facial expression, speech, keystroke) and physiological (blood volume, electrodermal activity, skin temperature) affective responses induced by visual stimuli, our system was able to achieve an average accuracy of 89.2 percent for binary positive and negative emotion classification under leave-one-participant-out cross-validation. Furthermore, we investigated the effectiveness of different combinations of data signals to cover different scenarios of signal availability.

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