首页> 外文会议>Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Early versus Late Modality Fusion of Deep Wearable Sensor Features for Personalized Prediction of Tomorrow’s Mood, Health, and Stress*
【24h】

Early versus Late Modality Fusion of Deep Wearable Sensor Features for Personalized Prediction of Tomorrow’s Mood, Health, and Stress*

机译:深度穿戴式传感器功能的早期和晚期形态融合,可个性化预测明天的心情,健康状况和压力*

获取原文

摘要

Predicting mood, health, and stress can sound an early alarm against mental illness. Multi-modal data from wearable sensors provide rigorous and rich insights into one’s internal states. Recently, deep learning-based features on continuous high-resolution sensor data have outperformed statistical features in several ubiquitous and affective computing applications including sleep detection and depression diagnosis. Motivated by this, we investigate multi-modal data fusion strategies featuring deep representation learning of skin conductance, skin temperature, and acceleration data to predict self-reported mood, health, and stress scores (0 - 100) of college students (N = 239). Our cross-validated results from the early fusion framework exhibit a significantly higher (p < 0.05) prediction precision over the late fusion for unseen users. Therefore, our findings call attention to the benefits of fusing physiological data modalities at a low level and corroborate the predictive efficacy of the deeply learned features.Clinical relevance— This establishes that with automatically extracted features from multiple sensor modalities, choosing the proper scheme of fusion can reduce the errors of predicting new users’ future wellbeing by as much as 13.2%.
机译:预测情绪,健康和压力可以对精神疾病发出早期警报。来自可穿戴式传感器的多模式数据可提供对自己内部状态的严格而丰富的见解。近来,在包括睡眠检测和抑郁症诊断在内的几种普遍存在的情感计算应用中,基于连续学习的高分辨率传感器数据的基于深度学习的功能已经胜过统计功能。以此为动力,我们研究了多模式数据融合策略,其中包括对皮肤电导,皮肤温度和加速度数据的深度表示学习,以预测大学生(N = 239)的自我报告的情绪,健康状况和压力评分(0-100) )。我们对早期融合框架的交叉验证结果显示,对于看不见的用户,其预测精度比晚期融合框架要高得多(p <0.05)。因此,我们的发现引起了人们的注意,即在较低水平上融合生理数据模式的好处,并证实了深度学习特征的预测效力。临床相关性-这可以通过从多种传感器模式中自动提取特征,选择合适的融合方案来确定这一点。可以将预测新用户未来生活的错误减少多达13.2%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号