基于Obrid-Sensor自编码器的人异常检测

Taiki Sunakawa, Y. Horikawa, A. Matsubara, S. Nishifuji, Shota Nakashima
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引用次数: 0

摘要

本文探讨了一种基于自动编码器的老年人跌倒检测方法,该方法易于训练。该分类器的准确率为98.7%,比常规方法提高2.1个点。在该方法中,Obrid-Sensor获取亮度信息。此外,基于信息来检测一个人是否处于跌落状态,具有保护隐私的作用。另一方面,传统方法使用支持向量机构建的分类器进行跌倒检测。然而,为了训练,有必要准备好跌倒状态和站立状态的数据。与传统方法相比,该方法所需的训练数据减少了78%,并且只使用站立状态的数据进行训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person Anomaly Detection based on Autoencoder with Obrid-Sensor
This paper explores a novel method of fall detection assuming elderly people which can be trained easily by using AutoEncoder. The classifier has accuracy is 98.7%, which is 2.1 points higher than conventional method. In this method, Obrid-Sensor acquire brightness information. Moreover, the information based to detect whether a person is in a falling state with protecting privacy. On the other hand, the conventional method uses a classifier built by Support Vector Machine for fall detection. However it is necessary to prepare the data of the falling state as well as the standing state for training. In the proposed method, 78% less required training data than the conventional method, and only use the data of standing state for training.
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