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基于回放的增量学习框架用于手势识别,克服了 sEMG 信号的时变特征。

Replay-Based Incremental Learning Framework for Gesture Recognition Overcoming the Time-Varying Characteristics of sEMG Signals.

机构信息

School of Mechanical Engineering, Nantong University, Nantong 226019, China.

School of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.

出版信息

Sensors (Basel). 2024 Nov 10;24(22):7198. doi: 10.3390/s24227198.

Abstract

Gesture recognition techniques based on surface electromyography (sEMG) signals face instability problems caused by electrode displacement and the time-varying characteristics of the signals in cross-time applications. This study proposes an incremental learning framework based on densely connected convolutional networks (DenseNet) to capture non-synchronous data features and overcome catastrophic forgetting by constructing replay datasets that store data with different time spans and jointly participate in model training. The results show that, after multiple increments, the framework achieves an average recognition rate of 96.5% from eight subjects, which is significantly better than that of cross-day analysis. The density-based spatial clustering of applications with noise (DBSCAN) algorithm is utilized to select representative samples to update the replayed dataset, achieving a 93.7% recognition rate with fewer samples, which is better than the other three conventional sample selection methods. In addition, a comparison of full dataset training with incremental learning training demonstrates that the framework improves the recognition rate by nearly 1%, exhibits better recognition performance, significantly shortens the training time, reduces the cost of model updating and iteration, and is more suitable for practical applications. This study also investigates the use of the incremental learning of action classes, achieving an average recognition rate of 88.6%, which facilitates the supplementation of action types according to the demand, and further improves the application value of the action pattern recognition technology based on sEMG signals.

摘要

基于表面肌电 (sEMG) 信号的手势识别技术在跨时间应用中面临着电极位移和信号时变特性导致的不稳定性问题。本研究提出了一种基于密集连接卷积网络 (DenseNet) 的增量学习框架,通过构建回放数据集来捕获非同步数据特征,并共同参与模型训练,从而克服灾难性遗忘。结果表明,在多次增量后,该框架从 8 位受试者中实现了平均 96.5%的识别率,明显优于跨日分析。密度峰值聚类算法 (DBSCAN) 用于选择代表性样本更新回放数据集,仅使用较少的样本即可实现 93.7%的识别率,优于其他三种传统样本选择方法。此外,与全数据集训练相比,增量学习训练的比较表明,该框架将识别率提高了近 1%,具有更好的识别性能,显著缩短了训练时间,降低了模型更新和迭代的成本,更适用于实际应用。本研究还研究了动作类别的增量学习,实现了平均 88.6%的识别率,便于根据需求补充动作类型,进一步提高了基于 sEMG 信号的动作模式识别技术的应用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f174/11598278/071d624cd0c5/sensors-24-07198-g001.jpg

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