利用浅lstm改进HAR的深度学习

Marius Bock, Alexander Hoelzemann, Michael Moeller, Kristof Van Laerhoven
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引用次数: 32

摘要

最近在人类活动识别(HAR)方面的研究表明,深度学习方法能够优于经典的机器学习算法。HAR中一个流行的深度学习架构是DeepConvLSTM。在本文中,我们建议改变DeepConvLSTM架构,采用1层而不是2层的LSTM。我们在5个公开可用的HAR数据集上验证了我们的架构更改,通过比较使用LSTM层中不同隐藏单元的更改前后的预测性能。结果表明,在所有数据集上,我们的体系结构都在原有基础上不断提高:f1分数的识别性能提高了11.7%,我们的体系结构显著减少了可学习参数的数量。与DeepConvLSTM相比,这种改进将训练时间减少了48%。我们的结果与在处理顺序数据时至少需要一个2层LSTM的观点形成了鲜明对比。根据我们的结果,我们认为上述权利要求可能不适用于基于传感器的HAR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Deep Learning for HAR with Shallow LSTMs
Recent studies in Human Activity Recognition (HAR) have shown that Deep Learning methods are able to outperform classical Machine Learning algorithms. One popular Deep Learning architecture in HAR is the DeepConvLSTM. In this paper we propose to alter the DeepConvLSTM architecture to employ a 1-layered instead of a 2-layered LSTM. We validate our architecture change on 5 publicly available HAR datasets by comparing the predictive performance with and without the change employing varying hidden units within the LSTM layer(s). Results show that across all datasets, our architecture consistently improves on the original one: Recognition performance increases up to 11.7% for the F1-score, and our architecture significantly decreases the amount of learnable parameters. This improvement over DeepConvLSTM decreases training time by as much as 48%. Our results stand in contrast to the belief that one needs at least a 2-layered LSTM when dealing with sequential data. Based on our results we argue that said claim might not be applicable to sensor-based HAR.
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