CVAIIVSep 22, 2020

The Use of AI for Thermal Emotion Recognition: A Review of Problems and Limitations in Standard Design and Data

arXiv:2009.10589v118 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving emotion recognition systems for AI researchers and practitioners by discussing thermal imaging's advantages and limitations, though it is incremental as a review paper.

This paper reviews the use of thermal imagery for facial emotion recognition, highlighting its potential as a semi-anonymous alternative to RGB imaging but noting challenges in data collection and validation across demographics.

With the increased attention on thermal imagery for Covid-19 screening, the public sector may believe there are new opportunities to exploit thermal as a modality for computer vision and AI. Thermal physiology research has been ongoing since the late nineties. This research lies at the intersections of medicine, psychology, machine learning, optics, and affective computing. We will review the known factors of thermal vs. RGB imaging for facial emotion recognition. But we also propose that thermal imagery may provide a semi-anonymous modality for computer vision, over RGB, which has been plagued by misuse in facial recognition. However, the transition to adopting thermal imagery as a source for any human-centered AI task is not easy and relies on the availability of high fidelity data sources across multiple demographics and thorough validation. This paper takes the reader on a short review of machine learning in thermal FER and the limitations of collecting and developing thermal FER data for AI training. Our motivation is to provide an introductory overview into recent advances for thermal FER and stimulate conversation about the limitations in current datasets.

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