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Human behavior recognition based on convolutional long and short time memory network

机译:基于卷积的长时间内存网络的人类行为识别

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Convolutional long and short time memory network is a kind of fusion model, which inherits the excellent spatial feature extraction ability of convolutional neural network, and can effectively complete the processing and classification of time series data by using the memory ability of long and short time memory network to historical data and the unique gating mechanism. This paper uses the human behavior data set collected by the Wireless Data Mining Laboratory (WISDM) of Fordham University to predict and classify the six daily human behaviors: walking, jogging, going upstairs, going downstairs, sitting and standing. By comparing with long and short time memory network, convolutional neural network and other deep learning models, the experimental results show that the convolutional long and short time memory network has the best performance among them, which the accuracy reaches 97.43% and has a great improvement in real-time and accuracy.
机译:卷积的长期和短时间内存网络是一种融合模型,它继承了卷积神经网络的优异空间特征提取能力,可以通过使用长短时间内存的存储器能力有效地完成时间序列数据的处理和分类 网络到历史数据和独特的门控机制。 本文采用了福特汉姆大学无线数据挖掘实验室(Wisdm)收集的人类行为数据集预测和分类六日的人类行为:走路,慢跑,楼上,楼下,坐着和站立。 通过与长时间内存网络,卷积神经网络和其他深度学习模型进行比较,实验结果表明,卷积的长期和短时间内记忆网络在其中最佳性能,精度达到97.43%,具有很大的改进 实时和准确性。

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