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DeepFaceLIFT: Interpretable Personalized Models for Automatic Estimation of Self-Reported Pain

机译:DeepFaceLIFT:可自动估算自我报告疼痛的可解释性个性化模型

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Previous research on automatic pain estimation from facial expressions has focused primarily on “one-size-?ts-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 signi?cantly 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 the proposed personalized model largely outperforms the traditional, unpersonalized models the intra-class correlation improves from a baseline performance of 19% to a personalized performance of 35% while also providing con?dence in the model's estimates–in contrast to existing models for the target task. Additionally, DeepFaceLIFT automatically discovers the pain-relevant facial regions for each person, allowing for an easy interpretation of the pain-related facial cues.
机译:从面部表情进行自动疼痛估计的先前研究主要集中在“一刀切”的指标(例如PSPI)上。在这项工作中,我们专注于直接估算每个人的自我报告的视觉模拟量表(VAS)疼痛指标,因为这被认为是疼痛测量的黄金标准。 VAS疼痛评分是高度主观的且与情境有关,并且其范围在不同人群之间可能存在显着差异。为了解决这些问题,我们提出了一种新颖的两阶段个性化模型,称为DeepFaceLIFT,用于自动估计VAS。该模型基于(1)神经网络和(2)高斯过程回归模型,用于对估计进行个性化通过一系列手工制作的个人特征和多任务学习来自我报告疼痛。我们在用于疼痛分析的基准数据集(UNBC-McMaster肩膀疼痛表达档案库)上显示,建议的个性化模型在很大程度上优于传统的非个性化模型,组内相关性从19%的基线表现提高到了35%的个性化表现与目标任务的现有模型形成对比的同时,还提供了模型估计的可信度。此外,DeepFaceLIFT会自动为每个人发现与疼痛相关的面部区域,从而轻松解释与疼痛相关的面部提示。

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