Tian Yu, Zhang Lei, Zhang Chi, Bao Bo, Li Qingtong, Wang Longfei, Song Zhenqiang, Li Dachao
State Key Laboratory of Precision Measuring Technology and Instruments Tianjin University Tianjin China.
CAS Center for Excellence in Nanoscience Beijing Institute of Nanoenergy and Nanosystems Chinese Academy of Sciences Beijing People's Republic of China.
Exploration (Beijing). 2023 Nov 23;4(1):20230109. doi: 10.1002/EXP.20230109. eCollection 2024 Feb.
Real-time foot pressure monitoring using wearable smart systems, with comprehensive foot health monitoring and analysis, can enhance quality of life and prevent foot-related diseases. However, traditional smart insole solutions that rely on basic data analysis methods of manual feature extraction are limited to real-time plantar pressure mapping and gait analysis, failing to meet the diverse needs of users for comprehensive foot healthcare. To address this, we propose a deep learning-enabled smart insole system comprising a plantar pressure sensing insole, portable circuit board, deep learning and data analysis blocks, and software interface. The capacitive sensing insole can map both static and dynamic plantar pressure with a wide range over 500 kPa and excellent sensitivity. Statistical tools are used to analyze long-term foot pressure usage data, providing indicators for early prevention of foot diseases and key data labels for deep learning algorithms to uncover insights into the relationship between plantar pressure patterns and foot issues. Additionally, a segmentation method assisted deep learning model is implemented for exercise-fatigue recognition as a proof of concept, achieving a high classification accuracy of 95%. The system also demonstrates various foot healthcare applications, including daily activity statistics, exercise injury avoidance, and diabetic foot ulcer prevention.
使用可穿戴智能系统进行实时足部压力监测,并进行全面的足部健康监测和分析,可以提高生活质量并预防足部相关疾病。然而,传统的智能鞋垫解决方案依赖于手动特征提取的基本数据分析方法,仅限于实时足底压力映射和步态分析,无法满足用户对全面足部医疗保健的多样化需求。为了解决这个问题,我们提出了一种基于深度学习的智能鞋垫系统,该系统包括足底压力传感鞋垫、便携式电路板、深度学习和数据分析模块以及软件接口。电容式传感鞋垫可以在超过500 kPa的宽范围内映射静态和动态足底压力,并且具有出色的灵敏度。统计工具用于分析长期足部压力使用数据,为足部疾病的早期预防提供指标,并为深度学习算法提供关键数据标签,以揭示足底压力模式与足部问题之间的关系。此外,作为概念验证,实施了一种分割方法辅助的深度学习模型用于运动疲劳识别,实现了95%的高分类准确率。该系统还展示了各种足部医疗保健应用,包括日常活动统计、运动损伤预防和糖尿病足溃疡预防。