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基于低分辨率热传感器和卷积神经网络的非侵入式跌倒检测系统。

An Unobtrusive Fall Detection System Using Low Resolution Thermal Sensors and Convolutional Neural Networks.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:6949-6952. doi: 10.1109/EMBC46164.2021.9631059.

Abstract

Human activity recognition has many potential applications. In an aged care facility, it is crucial to monitor elderly patients and assist them in the case of falls or other needs. Wearable devices can be used for such a purpose. However, most of them have been proven to be obtrusive, and patients reluctate or forget to wear them. In this study, we used infrared technology to recognize certain human activities including sitting, standing, walking, laying in bed, laying down, and falling. We evaluated a system consisting of two 24×32 thermal array sensors. One infrared sensor was installed on side and another one was installed on the ceiling of an experimental room capturing the same scene. We chose side and overhead mounts to compare the performance of classifiers. We used our prototypes to collect data from healthy young volunteers while performing eight different scenarios. After that, we converted data coming from the sensors into images and applied a supervised deep learning approach. The scene was captured by a visible camera and the video from the visible camera was used as the ground truth. The deep learning network consisted of a convolutional neural network which automatically extracted features from infrared images. Overall average F1-score of all classes for the side mount was 0.9044 and for the overhead mount was 0.8893. Overall average accuracy of all classes for the side mount was 96.65% and for the overhead mount was 95.77%. Our results suggested that our infrared-based method not only could unobtrusively recognize human activities but also was reasonably accurate.

摘要

人体活动识别具有许多潜在的应用。在养老院中,监测老年患者并在他们跌倒或有其他需求时为他们提供帮助至关重要。可穿戴设备可用于实现此目的。但是,大多数已证明它们具有干扰性,患者会拒绝或忘记佩戴它们。在这项研究中,我们使用红外技术识别包括坐、站、走、卧床、躺下和跌倒在内的某些人体活动。我们评估了一个由两个 24×32 热阵列传感器组成的系统。一个红外传感器安装在侧面,另一个安装在实验室内的天花板上,以捕捉相同的场景。我们选择侧面和顶部安装方式来比较分类器的性能。我们使用原型机来收集健康年轻志愿者在执行八个不同场景时的数据。之后,我们将来自传感器的数据转换为图像,并应用了监督式深度学习方法。可见摄像机捕捉场景,可见摄像机的视频用作地面实况。深度学习网络由卷积神经网络组成,该网络可自动从红外图像中提取特征。侧面安装的所有类别的平均 F1 得分为 0.9044,顶部安装的平均 F1 得分为 0.8893。侧面安装的所有类别的平均准确率为 96.65%,顶部安装的平均准确率为 95.77%。我们的结果表明,我们的基于红外的方法不仅可以非侵入式地识别人体活动,而且准确率也相当高。

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