Expressure: Detect Expressions Related to Emotional and Cognitive Activities Using Forehead Textile Pressure Mechanomyography
Overview
Authors
Affiliations
We investigate how pressure-sensitive smart textiles, in the form of a headband, can detect changes in facial expressions that are indicative of emotions and cognitive activities. Specifically, we present the Expressure system that performs surface pressure mechanomyography on the forehead using an array of textile pressure sensors that is not dependent on specific placement or attachment to the skin. Our approach is evaluated in systematic psychological experiments. First, through a mimicking expression experiment with 20 participants, we demonstrate the system's ability to detect well-defined facial expressions. We achieved accuracies of 0.824 to classify among three eyebrow movements (0.333 chance-level) and 0.381 among seven full-face expressions (0.143 chance-level). A second experiment was conducted with 20 participants to induce cognitive loads with N-back tasks. Statistical analysis has shown significant correlations between the Expressure features on a fine time granularity and the cognitive activity. The results have also shown significant correlations between the Expressure features and the N-back score. From the 10 most facially expressive participants, our approach can predict whether the N-back score is above or below the average with 0.767 accuracy.
RDA-MTE: an innovative model for emotion recognition in sports behavior decision-making.
Zhang S Front Neurosci. 2024; 18:1466013.
PMID: 39610868 PMC: 11602515. DOI: 10.3389/fnins.2024.1466013.
Martin-Niedecken A, Schwarz T, Schattin A Front Psychol. 2021; 12:572877.
PMID: 34234705 PMC: 8255375. DOI: 10.3389/fpsyg.2021.572877.
On the Use of Movement-Based Interaction with Smart Textiles for Emotion Regulation.
Jiang M, Nanjappan V, Ten Bhomer M, Liang H Sensors (Basel). 2021; 21(3).
PMID: 33540608 PMC: 7867248. DOI: 10.3390/s21030990.
Facial Muscle Activity Recognition with Reconfigurable Differential Stethoscope-Microphones.
Bello H, Zhou B, Lukowicz P Sensors (Basel). 2020; 20(17).
PMID: 32872633 PMC: 7506891. DOI: 10.3390/s20174904.
Physiological Sensors Based Emotion Recognition While Experiencing Tactile Enhanced Multimedia.
Raheel A, Majid M, Alnowami M, Anwar S Sensors (Basel). 2020; 20(14).
PMID: 32708056 PMC: 7411620. DOI: 10.3390/s20144037.