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Walking Gait Phase Detection Based on Acceleration Signals Using Voting-Weighted Integrated Neural Network

机译:基于加速信号的步行步态相位检测使用投票加权集成神经网络

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Human gait phase recognition is a significant technology for rehabilitation training robot, human disease diagnosis, artificial prosthesis, and so on. The efficient design of the recognition method for gait information is the key issue in the current gait phase division and eigenvalues extraction research. In this paper, a novel voting-weighted integrated neural network (VWI-DNN) is proposed to detect different gait phases from multidimensional acceleration signals. More specifically, it first employs a gait information acquisition system to collect different IMU sensors data fixed on the human lower limb. Then, with dimensionality reduction and four-phase division preprocessing, key features are selected and merged as unified vectors to learn common and domain knowledge in time domain. Next, multiple refined DNNs are transferred to design a multistream integrated neural network, which utilizes the mixture-granularity information to exploit high-dimensional feature representative. Finally, a voting-weighted function is developed to fuse different submodels as a unified representation for distinguishing small discrepancy among different gait phases. The end-to-end implementation of the VWI-DNN model is fine-tuned by the loss optimization of gradient back-propagation. Experimental results demonstrate the outperforming performance of the proposed method with higher classification accuracy compared with the other methods, of which classification accuracy and macro-F1 is up to 99.5%. More discussions are provided to indicate the potential applications in combination with other works.
机译:人态步态阶段识别是康复培训机器人,人类疾病诊断,人工假体等的重要技术。步态信息的识别方法的有效设计是当前步态相位划分和特征值提取研究的关键问题。本文提出了一种新的投票加权集成神经网络(VWI-DNN)以检测来自多维加速信号的不同步态阶段。更具体地,它首先采用步态信息获取系统来收集固定在人的下肢上的不同IMU传感器数据。然后,通过维度减少和四相划分预处理,选择关键特征并将其作为统一向量合并,以在时域中学习共同和域知识。接下来,传送多个精制的DNN以设计多级液集成神经网络,其利用混合粒度信息来利用高维特征代表。最后,开发了一种投票加权功能以使不同的子模型融合作用以区分不同步态阶段的小差异的统一表示。 VWI-DNN模型的端到端实现是通过渐变反向传播的损耗优化进行微调。实验结果表明,与其他方法相比,该方法具有较高分类精度的提出方法的表现性能,其中分类精度和宏F1高达99.5%。提供更多讨论以指示潜在的应用与其他作品相结合。

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