Psychophysiology investigates the causal relationship of physiological changes resulting from psychological states. There are significant challenges with machine learning-based momentary assessments of physiology due to varying data collection methods, physiological differences, data availability and the requirement for expertly annotated data. Advances in wearable technology have significantly increased the scale, sensitivity and accuracy of devices for recording physiological signals, enabling large-scale unobtrusive physiological data gathering. This work contributes an empirical evaluation of signal variances acquired from wearables and their associated impact on the classification of affective states by (i) assessing differences occurring in features representative of affective states extracted from electrocardiograms and photoplethysmography, (ii) investigating the disparity in feature importance between signals to determine signal-specific features, and (iii) investigating the disparity in feature importance between affective states to determine affect-specific features. Results demonstrate that the degree of feature variance between ECG and PPG in a dataset is reflected in the classification performance of that dataset. Additionally, beats-per-minute, inter-beat-interval and breathing rate are identified as common best-performing features across both signals. Feature variance per-affective state identifies hard-to-distinguish affective states requiring one-versus-rest or additional features to enable accurate classification.
翻译:由于数据收集方法、生理差异、数据可得性以及需要专家附加说明的数据,在机械学习基础上对生理生理学进行短期评估方面存在重大挑战。可磨损技术的进展大大提高了用于记录生理信号的装置的规模、敏感性和准确性,从而能够大规模收集不受侵扰的生理数据。这项工作通过以下方法,对因磨损产生的信号差异及其对感应状态分类的相关影响进行实证评估:(一) 评估从电心图和光脉冲学中提取的具有影响状态特征的特征出现的差异;(二) 调查信号在确定特定信号特征方面的重要性差异,以及(三) 调查影响状态之间在确定特定影响特征方面的重要性差异。结果显示,该数据集的分类性能反映了ECG和PG在数据集中的特征差异程度。此外,确定每分钟、间断和呼吸率是两种信号中通用的最佳性特征,需要一种信号的硬性偏差或硬性影响状态。