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使用可穿戴传感器对健康成年人和糖尿病患者的疲劳阶段进行分类。

Classification of Fatigue Phases in Healthy and Diabetic Adults Using Wearable Sensor.

机构信息

Department of Electrical & Computer Engineering, Texas A & M University at Qatar, Doha 23874, Qatar.

Department of Industrial & Systems Engineering, Texas A & M University, College Station, TX 77843, USA.

出版信息

Sensors (Basel). 2020 Dec 3;20(23):6897. doi: 10.3390/s20236897.

Abstract

Fatigue is defined as "a loss of force-generating capacity" in a muscle that can intensify tremor. Tremor quantification can facilitate early detection of fatigue onset so that preventative or corrective controls can be taken to minimize work-related injuries and improve the performance of tasks that require high-levels of accuracy. We focused on developing a system that recognizes and classifies voluntary effort and detects phases of fatigue. The experiment was designed to extract and evaluate hand-tremor data during the performance of both rest and effort tasks. The data were collected from the wrist and finger of the participant's dominant hand. To investigate tremor, time, frequency domain features were extracted from the accelerometer signal for segments of 45 and 90 samples/window. Analysis using advanced signal processing and machine-learning techniques such as decision tree, k-nearest neighbor, support vector machine, and ensemble classifiers were applied to discover models to classify rest and effort tasks and the phases of fatigue. Evaluation of the classifier's performance was assessed based on various metrics using 5-fold cross-validation. The recognition of rest and effort tasks using an ensemble classifier based on the random subspace and window length of 45 samples was deemed to be the most accurate (96.1%). The highest accuracy (~98%) that distinguished between early and late fatigue phases was achieved using the same classifier and window length.

摘要

疲劳被定义为肌肉“力量生成能力的丧失”,这种丧失会加剧震颤。震颤量化可以促进疲劳发作的早期检测,以便采取预防或纠正措施,最大限度地减少与工作相关的伤害,并提高需要高精度的任务的性能。我们专注于开发一种能够识别和分类自愿努力并检测疲劳阶段的系统。该实验旨在提取和评估参与者惯用手在休息和用力任务期间的手部震颤数据。数据是从参与者的手腕和手指采集的。为了研究震颤,从加速度计信号中提取了时间、频域特征,每个窗口有 45 和 90 个样本。应用先进的信号处理和机器学习技术(如决策树、k-最近邻、支持向量机和集成分类器)进行分析,以发现模型来分类休息和用力任务以及疲劳阶段。使用 5 倍交叉验证评估基于各种指标的分类器性能。使用基于随机子空间和 45 个样本窗口长度的集成分类器来识别休息和用力任务被认为是最准确的(96.1%)。使用相同的分类器和窗口长度,区分早期和晚期疲劳阶段的准确率最高(约 98%)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/173a/7729463/310d3036428f/sensors-20-06897-g001.jpg

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