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首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Interpreting Deep Learning Features for Myoelectric Control: A Comparison With Handcrafted Features
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Interpreting Deep Learning Features for Myoelectric Control: A Comparison With Handcrafted Features

机译:解释Myoelectric控制的深度学习功能:与手工特征的比较

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Existing research on myoelectric control systems primarily focuses on extracting discriminative characteristics of the electromyographic (EMG) signal by designing handcrafted features. Recently,however, deep learning techniques have been applied to the challenging task of EMG-based gesture recognition. The adoption of these techniques slowly shifts the focus from feature engineering to feature learning. Nevertheless, the black-box nature of deep learning makes it hard to understand the type of information learned by the network and how it relates to handcrafted features. Additionally, due to the high variability in EMG recordings between participants,deep features tend to generalize poorly across subjects using standard training methods.Consequently, this work introduces a new multi-domain learning algorithm, named ADANN (Adaptive Domain Adversarial Neural Network), which significantly enhances (p= 0.00004) inter-subject classification accuracy by an average of 19.40% compared to standard training. Using ADANN-generated features, this work provides the first topological data analysis of EMG-based gesture recognition for the characterisation of the information encoded within a deep network, using handcrafted features as landmarks. This analysis reveals that handcrafted features and the learned features (in the earlier layers) both try to discriminate between all gestures, but do not encode the same information to do so. In the later layers, the learned features are inclined to instead adopt a one-versus-all strategy for a given class. Furthermore, by using convolutional network visualization techniques, it is revealed that learned features actually tend to ignore the most activated channel during contraction, which is in stark contrast with the prevalence of handcrafted features designed to capture amplitude information. Overall, this work paves the way for hybrid feature sets by providing a clear guideline of complementary information encoded within learned and handcrafted features.
机译:肌电控制系统的现有研究主要侧重于通过设计手工特征来提取电偏振(EMG)信号的辨别特性。然而,最近,深入学习技术已经应用于基于EMG的手势识别的具有挑战性的任务。采用这些技术慢慢地将重点从特征工程转移到特征学习。尽管如此,深度学习的黑匣子性质使得难以理解网络了解的信息类型以及如何与手工制作功能相关。此外,由于参与者之间的EMG录制的高度变化,因此使用标准训练方法,深度特征倾向于贯穿对象跨对象的差..这项工作引入了一个名为Adann(自适应域对抗神经网络)的新的多域学习算法与标准培训相比,显着增强(P = 0.00004)间受试者间分类精度平均为19.40%。使用Adann生成的功能,该工作提供了基于EMG的手势识别的第一个拓扑数据分析,以表征在深网络中编码的信息,使用手工特征作为地标。该分析显示,手工制作的功能和学习功能(在早期的层中)都尝试歧视所有手势,但不编码相同的信息。在后面的层中,学习的功能倾向于为给定类采用一个与之一体的策略。此外,通过使用卷积网络可视化技术,揭示了学习特征实际上倾向于忽略收缩期间最激活的信道,这与设计用于捕获幅度信息的手工特征的普遍存在的血迹对比。总的来说,这项工作通过提供在学习和手工特征内编码的互补信息的明确指南来铺平混合特征集的方式。

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