基于力和加速度传感器的机器学习方法在坐姿分类中的应用。
Application of Machine Learning Approaches for Classifying Sitting Posture Based on Force and Acceleration Sensors.
作者信息
Zemp Roland, Tanadini Matteo, Plüss Stefan, Schnüriger Karin, Singh Navrag B, Taylor William R, Lorenzetti Silvio
机构信息
Institute for Biomechanics, ETH Zurich, Vladimir-Prelog-Weg 3, 8093 Zurich, Switzerland.
Seminar for Statistics, ETH Zurich, Rämistrasse 101, 8092 Zurich, Switzerland.
出版信息
Biomed Res Int. 2016;2016:5978489. doi: 10.1155/2016/5978489. Epub 2016 Oct 27.
Occupational musculoskeletal disorders, particularly chronic low back pain (LBP), are ubiquitous due to prolonged static sitting or nonergonomic sitting positions. Therefore, the aim of this study was to develop an instrumented chair with force and acceleration sensors to determine the accuracy of automatically identifying the user's sitting position by applying five different machine learning methods (Support Vector Machines, Multinomial Regression, Boosting, Neural Networks, and Random Forest). Forty-one subjects were requested to sit four times in seven different prescribed sitting positions (total 1148 samples). Sixteen force sensor values and the backrest angle were used as the explanatory variables (features) for the classification. The different classification methods were compared by means of a Leave-One-Out cross-validation approach. The best performance was achieved using the Random Forest classification algorithm, producing a mean classification accuracy of 90.9% for subjects with which the algorithm was not familiar. The classification accuracy varied between 81% and 98% for the seven different sitting positions. The present study showed the possibility of accurately classifying different sitting positions by means of the introduced instrumented office chair combined with machine learning analyses. The use of such novel approaches for the accurate assessment of chair usage could offer insights into the relationships between sitting position, sitting behaviour, and the occurrence of musculoskeletal disorders.
职业性肌肉骨骼疾病,尤其是慢性下背痛(LBP),因长时间静态坐姿或不符合人体工程学的坐姿而普遍存在。因此,本研究的目的是开发一种带有力和加速度传感器的仪器化椅子,通过应用五种不同的机器学习方法(支持向量机、多项式回归、提升、神经网络和随机森林)来确定自动识别用户坐姿的准确性。41名受试者被要求在七种不同的规定坐姿下各坐四次(共1148个样本)。16个力传感器值和靠背角度被用作分类的解释变量(特征)。通过留一法交叉验证方法比较了不同的分类方法。使用随机森林分类算法取得了最佳性能,对于该算法不熟悉的受试者,平均分类准确率达到90.9%。七种不同坐姿的分类准确率在81%至98%之间变化。本研究表明,借助引入的仪器化办公椅结合机器学习分析,可以准确地对不同坐姿进行分类。使用这种新颖的方法来准确评估椅子的使用情况,可以深入了解坐姿、坐立行为与肌肉骨骼疾病发生之间的关系。