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用于人类活动可视化与分类的对抗自编码器:在低成本商用测力板上的应用。

Adversarial autoencoder for visualization and classification of human activity: Application to a low-cost commercial force plate.

作者信息

Hernandez Vincent, Kulić Dana, Venture Gentiane

机构信息

Electrical and Computer Engineering - University of Waterloo, ON, Canada; Department of Mechanical Systems Engineering - Tokyo University of Agriculture and Technology, Tokyo, Japan.

Monash University, 14 Alliance Lane, Clayton Campus, VIC 3800, Australia.

出版信息

J Biomech. 2020 Apr 16;103:109684. doi: 10.1016/j.jbiomech.2020.109684. Epub 2020 Feb 26.

DOI:10.1016/j.jbiomech.2020.109684
PMID:32213290
Abstract

The ability to visualize and interpret high dimensional time-series data will be critical as wearable and other sensors are adopted in rehabilitation protocols. This study proposes a latent space representation of high dimensional time-series data for data visualization. For that purpose, a deep learning model called Adversarial AutoEncoder (AAE) is proposed to perform efficient data dimensionality reduction by considering unsupervised and semi-supervised adversarial training. Eighteen subjects were recruited for the experiment and performed two sets of exercises (upper and lower body) on the Wii Balance Board. Then, the accuracy of the latent space representation is evaluated on both sets of exercises separately. Data dimensionality reduction with conventional Machine Learning (ML) and supervised Deep Learning (DL) classification are also performed to compare the efficiency of AAE approaches. The results showed that AAE can outperform conventional ML approaches while providing close results to DL supervised classification. AAE approaches for data visualization are a promising approach to monitor the subject's movements and detect adverse events or similarity with previous data, providing an intuitive way to monitor the patient's progress and provide potential information for rehabilitation tracking.

摘要

随着可穿戴设备和其他传感器在康复方案中的应用,可视化和解释高维时间序列数据的能力将至关重要。本研究提出了一种用于数据可视化的高维时间序列数据的潜在空间表示。为此,提出了一种名为对抗自编码器(AAE)的深度学习模型,通过考虑无监督和半监督对抗训练来执行高效的数据降维。招募了18名受试者进行实验,并在Wii平衡板上进行了两组练习(上半身和下半身)。然后,分别在两组练习中评估潜在空间表示的准确性。还进行了传统机器学习(ML)和监督深度学习(DL)分类的数据降维,以比较AAE方法的效率。结果表明,AAE在提供与DL监督分类相近结果的同时,优于传统ML方法。用于数据可视化的AAE方法是一种很有前途的方法,可用于监测受试者的运动、检测不良事件或与先前数据的相似性,为监测患者的进展提供直观的方式,并为康复跟踪提供潜在信息。

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