HAR Using Bi-directional LSTM with RNN

N. Singh, Koduru Sriranga Suprabhath
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引用次数: 4

Abstract

It is hard to monitor human activities in various contexts like security surveillance, healthcare, and human-computer interaction. Human Activity Recognition is the process of predicting what a person is doing based on the traces of their movement. We propose using deep recurrent neural networks (DRNNs) for building recognition models capable of capturing long-range dependencies in variable-length input sequences. We present unidirectional, bidirectional, and cascaded architectures based on long short-term memory (LSTM), DRNNs and evaluate their effectiveness on various benchmark datasets. Long shortterm memory (LSTM) is an artificial deep recurrent neural network (DRNN) architecture used in deep learning, especially for time series prediction. It can process single data points (such as images) and entire data sequences (such as speech or video). LSTM networks are well-suited for classifying, processing, and making predictions based on time series data since there can be lags of unknown duration between essential events in a time series in real-time. We proposed Human Activity Recognition (HAR) using a smartphone dataset and LSTM. Compared to a classical approach, using Deep Recurrent Neural Networks (DRNN) with Long Short-Term Memory cells (LSTMs) require no or almost no feature engineering. Data can be fed directly into the neural network, which acts as a black box, modeling the problem correctly. This means that the neural networks are almost always able to identify the movement type correctly. We used jupyter notebook with python 3.7+.
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基于RNN的双向LSTM算法
在安全监视、医疗保健和人机交互等各种环境中,很难监控人类活动。人类活动识别是根据一个人的运动轨迹来预测他正在做什么的过程。我们建议使用深度递归神经网络(DRNNs)来构建能够捕获变长度输入序列中的远程依赖关系的识别模型。我们提出了基于长短期记忆(LSTM)、drnn的单向、双向和级联架构,并评估了它们在各种基准数据集上的有效性。长短期记忆(LSTM)是一种用于深度学习特别是时间序列预测的人工深度递归神经网络(DRNN)架构。它可以处理单个数据点(如图像)和整个数据序列(如语音或视频)。LSTM网络非常适合基于时间序列数据进行分类、处理和预测,因为实时时间序列中的基本事件之间可能存在未知持续时间的滞后。我们提出了使用智能手机数据集和LSTM的人类活动识别(HAR)。与传统方法相比,使用具有长短期记忆细胞(LSTMs)的深度递归神经网络(DRNN)不需要或几乎不需要特征工程。数据可以直接输入神经网络,神经网络作为一个黑匣子,正确地建模问题。这意味着神经网络几乎总是能够正确地识别运动类型。我们使用jupyter notebook和python 3.7+。
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