...
首页> 外文期刊>IEEE sensors journal >Novel Wearable Monitoring System of Forward Head Posture Assisted by Magnet-Magnetometer Pair and Machine Learning
【24h】

Novel Wearable Monitoring System of Forward Head Posture Assisted by Magnet-Magnetometer Pair and Machine Learning

机译:磁磁仪对辅助磁头姿势的新型可穿戴监控系统及机器学习

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Forward head posture (FHP) increasingly threatens human health through numerous disorders. Wearable sensing methods facilitate promising solutions to portably quantify FHP symptoms. Flex and acceleration sensors are two major wearable sensors; however, several technical challenges still remain. This work proposes a novel wearable FHP sensing solution relying on a three-axis magnetometer paired with a miniature permanent magnet. The magnetometer precisely calibrates head postures by tracking directional changes of the magnetic field from the magnet and by sensor-fusing with an accelerometer. Sensor-fused data are processed by machine learning algorithms, either to provide neck-angle values representing craniovertebral angle with reduced noise (regression algorithms) or to determine risk levels of FHP (classification algorithms). Performances of four regression and four classification algorithms are compared for two experimental scenarios (named calibration-mode and usage-mode scenarios). In both scenarios, our sensor-fusion with the magnet-magnetometer pair exhibited outstanding performances compared to a conventional accelerometer approach. The performances differed by machine learning algorithms and scenarios, but reliably demonstrated extremely high correlation coefficients (R =0.9945) and classification accuracy (similar to 95.6%) in the calibration-mode scenario. When participants watched videos using their own smartphones (usage mode), a high correlation coefficient (R =similar to 0.9365) and classification accuracy (similar to>90.4%) were achieved.
机译:前货姿势(FHP)越来越多地威胁着众多疾病的人类健康。可穿戴式传感方法有助于促进溶液,以便采用无效的症状量化FHP症状。弯曲和加速度传感器是两个主要可穿戴传感器;但是,仍然存在若干技术挑战。这项工作提出了一种新型可穿戴的FHP传感解决方案,依靠三轴磁力计配对与微型永磁体配对。磁力计通过跟踪来自磁体的磁场的方向变化,并通过带加速度计的传感器熔断来精确校准头部姿势。传感器融合数据由机器学习算法处理,用于提供表示具有降低噪声(回归算法)的Craniovertebral角度的颈角值或确定FHP的风险水平(分类算法)。将四个回归的性能和四种分类算法进行了比较,两种实验场景(命名校准模式和使用模式方案)。在这两种情况下,与磁磁仪对的传感器融合与传统的加速度计方法相比表现出出色的性能。计算机学习算法和场景的性能不同,但可靠地显示出极高的相关系数(r = 0.9945)和校准模式方案中的分类准确性(类似于95.6%)。当参与者使用自己的智能手机(使用模式)观看视频时,实现了高相关系数(R =类似于0.9365)和分类准确度(类似于> 90.4%)。

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