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Recovery Method for Missing Sensor Data in Multi-Sensor Based Walking Recognition System

机译:基于多传感器的步行识别系统中传感器数据丢失的恢复方法

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Missing data is a major challenge in activity recognition and becomes an increasingly important study. Most current research on activity recognition is based on multiple sensors, which may bring the problem of missing data for one or more sensors. This paper presents Multi-source Denoising AutoEncoder (MSDA) for filling missing sensor data in walking recognition system based on previously proposed Hierarchical AdaBoost. The recovery method uses Denoising AutoEncoder to build a neural network which output is the embedding of features that include missing sensors, so that it can predict the features for missing sensor data. The experimental results show that MSDA can not only improve the recognition accuracy, but has higher performance comparing with other missing data processing method such as EM-PCA and filling missing data with a special value.
机译:数据丢失是活动识别中的主要挑战,并且已成为一项越来越重要的研究。当前有关活动识别的大多数研究都基于多个传感器,这可能会带来一个或多个传感器缺少数据的问题。本文提出了一种基于先前提出的Hierarchical AdaBoost的多源去噪自动编码器(MSDA),用于填充行走识别系统中丢失的传感器数据。恢复方法使用Denoising AutoEncoder构建噪声神经网络,该神经网络的输出是包含缺少传感器的要素的嵌入,以便可以预测缺少传感器数据的要素。实验结果表明,与其他缺失数据处理方法(如EM-PCA)和用特殊值填充缺失数据相比,MSDA不仅可以提高识别精度,而且具有更高的性能。

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