首页> 外文会议>IEEE International Conference on Systems, Man, and Cybernetics >Deep-Learning LSTM Mechanism and Wearable Devices based Virtual Fitness-Coach Information System for Barbell Bench Press
【24h】

Deep-Learning LSTM Mechanism and Wearable Devices based Virtual Fitness-Coach Information System for Barbell Bench Press

机译:基于深度学习的LSTM机制和基于虚拟健身 - 教练信息系统的杠铃凳压力机

获取原文

摘要

This study aims to design and develop a virtual fitness-coach information system for barbell bench press based on deep-learning Long Short Term Memory (LSTM) mechanism and wearable devices. We utilizes a set of three-axis accelerometers, gyroscopes and Electromyography (EMG) sensing modules to design our proposed wearable devices. Through computer and smartphone, the analysis and real-time assessment of the weight training in barbell free bench press can be performed to avoid injury in weight training and improve the quality of training performance.In this study, 21 subjects are recruited to use our proposed wearable devices for weight training in barbell free bench press. In the training, the subject’s physiological signals and videos are captured, and the subject’s signals are extracted according to the 11 most common kinds of errors marked by the fitness instructor, including 7 posture errors and 4 kinds of muscle force errors. After the extracted signal is normalized, the data is fed for the Recurrent Neural Network (RNN) training through the Long Short Term Memory (LSTM) to classify the weight training errors. The experimental results show that the classification threshold used in the classification has the best classification result when set at 0.5, and the overall average accuracy, accuracy, recall rate, F1 Score, FPR and FNR are 91.84%, 89.25%, 88.17%, 88.18%, 6.50% and 11.83%, respectively. We found that in some categories, because the sensors are not powerful enough to capture the characteristics of the errors, the accuracy is low. While the overall accuracy of the other categories is higher than 85%.In order to accelerate the training speed of LSTM, we also try to use the common factor extraction analysis to reduce the data of accelerometers and gyroscopes from 24 to 18, 12 and 6 dimensions for training. When the total dimension including EMG is 30 dimensions, there is not much difference in the accuracy when the dimension is reduced to 24 or 18. However when it is reduced to 12 dimensions, the evaluation metrics are reduced to below 70%, and the False Negative Rate (FNR) has risen sharply to 30.21%. We therefore choose to reduce the training data from 30 dimensions to 18 dimensions to maintain recognition accuracy and to accelerate LSTM training.To verify the feasibility of our Virtual Fitness-Coach Information System, we have further recruited 5 subjects for user satisfaction survey of the instant voice feedback and our wearable devices. The users show relatively high satisfiaction about our instant feedback system in the following aspects: helpfulness, clearance, reliability, correctness, and performance. The users also feel relatively comfortable for our wearable devices and suggest further simplification of our wearable devices for ease of wearing.
机译:本研究旨在设计和开发杠铃卧推基于深学习长短期记忆(LSTM)机制和可穿戴式设备的虚拟健身教练信息系统。我们采用了一系列的三轴加速度计,陀螺仪和肌电图检测模块来设计我们提出的可穿戴式设备。通过电脑和智能手机,可以进行在杠铃自由卧推的重量训练的分析和实时评估,以避免重量训练伤和提高培训performance.In这项研究的质量,21名受试者被招募来使用我们的建议对于重量训练可穿戴设备在自由杠铃卧推。在训练中,受试者的生理信号和视频被捕获,并且被检者的信号根据所述11最常见的类型的错误由健身教练标记,包括7点姿势误差和4种肌肉力的错误提取。所提取的信号进行归一化后,将数据馈送用于通过长短期记忆(LSTM)的回归神经网络(RNN)训练的重量训练误差分类。实验结果表明,在分类中使用的分类的阈值具有最佳的分类结果时设定为0.5,和总平均准确度,准确度,查全率,F1分数,FPR和FNR是91.84%,89.25%,88.17%,88.18 %,6.50%和11.83分别%。我们发现,在某些类别,因为传感器没有足够强大的捕获错误的特性,精度低。而其他类别的整体精度是高于85%。为了加速LSTM的训练速度,我们也尝试使用提取公因子分析加速度计的数据和陀螺仪减少从24至18,12和6尺寸进行培训。当总尺寸包括EMG为30米的尺寸,没有在精确度太大的差别时的尺寸减少到24或18。但是,当它被降低到12米的尺寸,评价指标降低到低于70%,并且假阴性率(FNR)大幅上升至30.21%。因此,我们选择从30种尺寸的训练数据减少到18层的尺寸保持的识别精度和加快LSTM training.To验证我们的虚拟健身教练信息系统的可行性,我们进一步招募5个科目为即时的用户满意度调查语音反馈和我们的可穿戴式设备。用户显示有关我们的即时反馈系统在以下几个方面比较高satisfiaction:乐于助人,清关,可靠性,正确性和性能。用户也觉得我们的可穿戴设备相对舒适和建议我们的可穿戴式设备的进一步简化,便于穿着。

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