DeepFaceLIFT: Interpretable Personalized Models for Automatic Estimation of Self-Reported Pain
Dianbo Liu, Fengjiao Peng, Andrew Shea, Ognjen (Oggi) Rudovic,, Rosalind Picard

TL;DR
DeepFaceLIFT is a personalized, interpretable model that improves automatic self-reported pain estimation from facial expressions by accounting for individual differences and discovering relevant facial cues.
Contribution
It introduces a novel two-stage personalized model combining neural networks and Gaussian processes for pain estimation, outperforming traditional methods.
Findings
Personalized model increases intra-class correlation from 19% to 35%.
Model automatically identifies pain-relevant facial regions.
Provides confidence estimates for pain scores.
Abstract
Previous research on automatic pain estimation from facial expressions has focused primarily on "one-size-fits-all" metrics (such as PSPI). In this work, we focus on directly estimating each individual's self-reported visual-analog scale (VAS) pain metric, as this is considered the gold standard for pain measurement. The VAS pain score is highly subjective and context-dependent, and its range can vary significantly among different persons. To tackle these issues, we propose a novel two-stage personalized model, named DeepFaceLIFT, for automatic estimation of VAS. This model is based on (1) Neural Network and (2) Gaussian process regression models, and is used to personalize the estimation of self-reported pain via a set of hand-crafted personal features and multi-task learning. We show on the benchmark dataset for pain analysis (The UNBC-McMaster Shoulder Pain Expression Archive) that…
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Taxonomy
TopicsMachine Learning in Healthcare · Emotion and Mood Recognition · Pain Management and Placebo Effect
MethodsGaussian Process
