학술논문

Affect Recognition in Hand-Object Interaction Using Object-Sensed Tactile and Kinematic Data
Document Type
Periodical
Source
IEEE Transactions on Haptics IEEE Trans. Haptics Haptics, IEEE Transactions on. 16(1):112-117 Jan, 2023
Subject
Computing and Processing
Signal Processing and Analysis
Task analysis
Grasping
Kinematics
Sensors
Human-robot interaction
Shape
Feature extraction
Affective touch
emotion classification
hand-object interaction
vitality forms
tactile data
Language
ISSN
1939-1412
2329-4051
2334-0134
Abstract
We investigate the recognition of the affective states of a person performing an action with an object, by processing the object-sensed data. We focus on sequences of basic actions such as grasping and rotating, which are constituents of daily-life interactions. iCube, a 5 cm cube, was used to collect tactile and kinematics data that consist of tactile maps (without information on the pressure applied to the surface), and rotations. We conduct two studies: classification of i) emotions and ii) the vitality forms. In both, the participants perform a semi-structured task composed of basic actions. For emotion recognition, 237 trials by 11 participants associated with anger, sadness, excitement, and gratitude were used to train models using 10 hand-crafted features. The classifier accuracy reaches up to 82.7%. Interestingly, the same classifier when learned exclusively with the tactile data performs on par with its counterpart modeled with all 10 features. For the second study, 1135 trials by 10 participants were used to classify two vitality forms. The best-performing model differentiated gentle actions from rude ones with an accuracy of 84.85%. The results also confirm that people touch objects differently when performing these basic actions with different affective states and attitudes.