Gender and emotion recognition with implicit user signals
Source
Icmi 2017 Proceedings of the 19th ACM International Conference on Multimodal Interaction
Date Issued
2017-11-03
Author(s)
Bilalpur, Maneesh
Kia, Seyed Mostafa
Chawla, Manisha
Chua, Tat Seng
Subramanian, Ramanathan
Abstract
We examine the utility of implicit user behavioral signals captured using low-cost, off-the-shelf devices for anonymous gender and emotion recognition. A user study designed to examine male and female sensitivity to facial emotions confirms that females recognize (especially negative) emotions quicker and more accurately than men, mirroring prior findings. Implicit viewer responses in the form of EEG brain signals and eye movements are then examined for existence of (a) emotion and gender-specific patterns from event-related potentials (ERPs) and fixation distributions and (b) emotion and gender discriminability. Experiments reveal that (i) Gender and emotion-specific differences are observable from ERPs, (ii) multiple similarities exist between explicit responses gathered from users and their implicit behavioral signals, and (iii) Significantly above-chance (≈70%) gender recognition is achievable on comparing emotion-specific EEG responses- gender differences are encoded best for anger and disgust. Also, fairly modest valence (positive vs negative emotion) recognition is achieved with EEG and eye-based features.
Subjects
EEG | Eye movements | Facial emotion processing | Gender and emotion recognition | Gender differences | Implicit behavioral signals
