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Multimodal Sensor Motion Intention Recognition Based on Three-Dimensional Convolutional Neural Network Algorithm

机译:基于三维卷积神经网络算法的多模态传感器运动意图识别

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摘要

With the development of microelectronic technology and computer systems, the research of motion intention recognition based on multimodal sensors has attracted the attention of the academic community. Deep learning and other nonlinear neural network models have a wide range of applications in big data sets. We propose a motion intention recognition algorithm based on multimodal long-term and short-term spatiotemporal feature fusion. We divide the target data into multiple segments and use a three-dimensional convolutional neural network to extract the short-term spatiotemporal features. The three types of features of the same segment are fused together and input into the LSTM network for time-series modeling to further fuse the features to obtain multimodal long-term spatiotemporal features with higher discrimination. According to the lower limb movement pattern recognition model, the minimum number of muscles and EMG signal characteristics required to accurately recognize the movement state of the lower limbs are determined. This minimizes the redundant calculation cost of the model and ensures the real-time output of the system results.
机译:随着微电子技术和计算机系统的发展,基于多模态传感器的运动意图识别研究引起了学术界的关注。深度学习和其他非线性神经网络模型在大数据集中有着广泛的应用。提出了一种基于多模态长期和短期时空特征融合的运动意图识别算法。我们将目标数据划分为多个片段,并使用三维卷积神经网络提取短期时空特征。将同一段的三类特征融合在一起,输入LSTM网络进行时间序列建模,进一步融合特征,获得具有更高辨别力的多模态长期时空特征。根据下肢运动模式识别模型,确定准确识别下肢运动状态所需的最小肌肉数量和肌电信号特征。这最大限度地减少了模型的冗余计算成本,并确保了系统结果的实时输出。

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