Litcius/Paper detail

Automatic Frustration Detection Using Thermal Imaging

Youssef Mohamed, Giulia Ballardini, Maria Teresa Parreira, Séverin Lemaignan, Iolanda Leite

20222022 17th ACM/IEEE International Conference on Human-Robot Interaction (HRI)12 citationsDOI

Abstract

To achieve seamless interactions, robots have to be capable of reliably detecting affective states in real time. One of the possible states that humans go through while interacting with robots is frustration. Detecting frustration from RGB images can be challenging in some real-world situations; thus, we investigate in this work whether thermal imaging can be used to create a model that is capable of detecting frustration induced by cognitive load and failure. To train our model, we collected a data set from 18 participants experiencing both types of frustration induced by a robot. The model was tested using features from several modalities: thermal, RGB, Electrodermal Activity (EDA), and all three combined. When data from both frustration cases were combined and used as training input, the model reached an accuracy of 89% with just RGB features, 87% using only thermal features, 84% using EDA, and 86% when using all modalities. Furthermore, the highest accuracy for the thermal data was reached using three facial regions of interest: nose, forehead and lower lip.

Topics & Concepts

FrustrationComputer scienceRGB color modelArtificial intelligenceModalitiesRobotForeheadComputer visionSet (abstract data type)PsychologyMedicineSocial psychologyProgramming languageSocial scienceSurgerySociologyEEG and Brain-Computer InterfacesEmotion and Mood RecognitionNeural and Behavioral Psychology Studies