Linyi University, Linyi, China.
Comput Math Methods Med. 2022 May 30;2022:5741787. doi: 10.1155/2022/5741787. eCollection 2022.
Athletes usually arrange their training plans and determine their training intensity according to the coach's experience and simple physical indicators such as heart rate during exercise. However, the accuracy of this method is poor, and the training plan and exercise intensity arranged according to this method can easily cause physical damage, or the training cannot meet the actual needs. Therefore, in order to realize the reasonable arrangement and monitoring of athletes' training, a method of human exercise intensity recognition based on ECG (electrocardiogram) and PCG (Phonocardiogram) is proposed. First, the ECG and PCG signals are fused into a two-dimensional image, and the dataset is marked and divided according to the different motion intensities. Then, the training set is trained with a CNN (convolutional neural network) to obtain the prediction model of the neural network. Finally, the neural network model is used to identify the ECG and PCG signals to judge the exercise intensity of the athlete, so as to adjust the training plan according to the exercise intensity. The recognition accuracy of the model on the dataset can reach 95.68%. Compared with the use of heart rate to detect the physical state during exercise, ECG records the total potential changes in the process of depolarization and repolarization of the heart, and PCG records the waveform of the beating sound of the heart, which contains richer feature information. Combined with the CNN method, the athlete's exercise intensity prediction model constructed by extracting the features of the athlete's ECG and PCG signals realizes the real-time monitoring of the athlete's exercise intensity and has high accuracy and generalization ability.
运动员通常根据教练的经验和简单的运动时心率等生理指标来安排训练计划和确定训练强度。但是,这种方法的准确性较差,根据这种方法安排的训练计划和运动强度很容易造成身体损伤,或者训练无法满足实际需求。因此,为了实现对运动员训练的合理安排和监控,提出了一种基于心电图(ECG)和心音图(PCG)的人体运动强度识别方法。首先,将 ECG 和 PCG 信号融合成二维图像,并根据不同的运动强度对数据集进行标记和划分。然后,使用卷积神经网络(CNN)对训练集进行训练,得到神经网络的预测模型。最后,使用神经网络模型识别 ECG 和 PCG 信号,判断运动员的运动强度,从而根据运动强度调整训练计划。该模型在数据集上的识别准确率可达 95.68%。与使用心率来检测运动时的身体状态相比,ECG 记录了心脏去极化和复极化过程中的总电势变化,而 PCG 记录了心脏跳动声音的波形,包含更丰富的特征信息。结合 CNN 方法,通过提取运动员 ECG 和 PCG 信号的特征构建的运动员运动强度预测模型实现了对运动员运动强度的实时监控,具有较高的准确性和泛化能力。