Faculty of Computing, Engineering and Science, University of South Wales, Pontypridd CF37 1DL, UK.
Rehabilitation Engineering Unit, Artificial Limb & Appliance Service, Cardiff and Vale University Health Board, Treforest Industrial Estate, Pontypridd CF37 5TF, UK.
Sensors (Basel). 2024 May 5;24(9):2940. doi: 10.3390/s24092940.
Incorrect sitting posture, characterized by asymmetrical or uneven positioning of the body, often leads to spinal misalignment and muscle tone imbalance. The prolonged maintenance of such postures can adversely impact well-being and contribute to the development of spinal deformities and musculoskeletal disorders. In response, smart sensing chairs equipped with cutting-edge sensor technologies have been introduced as a viable solution for the real-time detection, classification, and monitoring of sitting postures, aiming to mitigate the risk of musculoskeletal disorders and promote overall health. This comprehensive literature review evaluates the current body of research on smart sensing chairs, with a specific focus on the strategies used for posture detection and classification and the effectiveness of different sensor technologies. A meticulous search across MDPI, IEEE, Google Scholar, Scopus, and PubMed databases yielded 39 pertinent studies that utilized non-invasive methods for posture monitoring. The analysis revealed that Force Sensing Resistors (FSRs) are the predominant sensors utilized for posture detection, whereas Convolutional Neural Networks (CNNs) and Artificial Neural Networks (ANNs) are the leading machine learning models for posture classification. However, it was observed that CNNs and ANNs do not outperform traditional statistical models in terms of classification accuracy due to the constrained size and lack of diversity within training datasets. These datasets often fail to comprehensively represent the array of human body shapes and musculoskeletal configurations. Moreover, this review identifies a significant gap in the evaluation of user feedback mechanisms, essential for alerting users to their sitting posture and facilitating corrective adjustments.
不正确的坐姿,其特点是身体不对称或不均匀定位,通常会导致脊柱错位和肌肉张力失衡。长时间保持这种姿势会对健康产生不利影响,并导致脊柱畸形和肌肉骨骼疾病的发展。因此,配备先进传感器技术的智能感应椅被引入作为实时检测、分类和监测坐姿的可行解决方案,旨在降低肌肉骨骼疾病的风险并促进整体健康。本综述全面评估了智能感应椅的现有研究,重点关注用于姿势检测和分类的策略以及不同传感器技术的有效性。通过对 MDPI、IEEE、Google Scholar、Scopus 和 PubMed 数据库的细致搜索,共获得了 39 项使用非侵入性方法进行姿势监测的相关研究。分析表明,力觉传感器(FSR)是用于姿势检测的主要传感器,而卷积神经网络(CNN)和人工神经网络(ANN)是用于姿势分类的主要机器学习模型。然而,观察到由于训练数据集中的大小限制和缺乏多样性,CNN 和 ANN 在分类准确性方面并不优于传统的统计模型。这些数据集往往无法全面代表人体形状和肌肉骨骼结构的多样性。此外,本综述还发现,在评估用户反馈机制方面存在显著差距,用户反馈机制对于提醒用户注意坐姿并促进纠正调整至关重要。