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Human Activity Recognition using LSTM-RNN Deep Neural Network Architecture

机译:使用LSTM-RNN深神经网络架构的人类活动识别

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Using raw sensor data to model and train networks for Human Activity Recognition can be used in many different applications, from fitness tracking to safety monitoring applications. These models can be easily extended to be trained with different data sources for increased accuracies or an extension of classifications for different prediction classes. This paper goes into the discussion on the available dataset provided by WISDM and the unique features of each class for the different axes. Furthermore, the design of a Long Short Term Memory (LSTM) architecture model is outlined for the application of human activity recognition. An accuracy of above 94% and a loss of less than 30% has been reached in the first 500 epochs of training.
机译:使用原始传感器数据可以在许多不同的应用中使用对人类活动识别的模型和培训网络,从健身跟踪到安全监控应用。这些型号可以很容易地扩展到培训,以提高不同的数据源,以提高不同预测类的分类的准确性或扩展。本文进入了WisDM提供的可用数据集的讨论以及不同轴的每个类的独特功能。此外,对于人类活动识别的应用,概述了长短短期存储器(LSTM)架构模型的设计。在训练的前500个时期,已经达到了高于94%以上的准确性,损失低于30%。

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