Wuhan Textile University, Wuhan, China.
Sci Rep. 2024 Mar 28;14(1):7414. doi: 10.1038/s41598-024-57912-3.
Wearable sensors are widely used in medical applications and human-computer interaction because of their portability and powerful privacy. Human activity identification based on sensor data plays a vital role in these fields. Therefore, it is important to improve the recognition performance of different types of actions. Aiming at the problems of insufficient time-varying feature extraction and gradient explosion caused by too many network layers, a time convolution network recognition model with attention mechanism (TCN-Attention-HAR) was proposed. The model effectively recognizes and emphasizes the key feature information. The ability of extracting temporal features from TCN (temporal convolution network) is improved by using the appropriate size of the receiver domain. In addition, attention mechanisms are used to assign higher weights to important information, enabling models to learn and identify human activities more effectively. The performance of the Open Data Set (WISDM, PAMAP2 and USC-HAD) is improved by 1.13%, 1.83% and 0.51%, respectively, compared with other advanced models, these results clearly show that the network model presented in this paper has excellent recognition performance. In the knowledge distillation experiment, the parameters of student model are only about 0.1% of those of teacher model, and the accuracy of the model has been greatly improved, and in the WISDM data set, compared with the teacher's model, the accuracy is 0.14% higher.
可穿戴传感器由于其便携性和强大的隐私性,在医学应用和人机交互中得到了广泛的应用。基于传感器数据的人体活动识别在这些领域中起着至关重要的作用。因此,提高对不同类型动作的识别性能非常重要。针对网络层数过多导致的时变特征提取不足和梯度爆炸问题,提出了一种具有注意力机制的时卷积网络识别模型(TCN-Attention-HAR)。该模型能够有效地识别和强调关键特征信息。通过使用适当大小的接收域,提高了 TCN(时卷积网络)提取时间特征的能力。此外,注意力机制用于为重要信息分配更高的权重,使模型能够更有效地学习和识别人体活动。与其他先进模型相比,在 Open Data Set(WISDM、PAMAP2 和 USC-HAD)上的性能分别提高了 1.13%、1.83%和 0.51%,这些结果清楚地表明,本文提出的网络模型具有出色的识别性能。在知识蒸馏实验中,学生模型的参数仅为教师模型的约 0.1%,模型的准确性得到了极大的提高,并且在 WISDM 数据集上,与教师模型相比,准确性提高了 0.14%。