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A Fall Detection System Based on Infrared Array Sensors with Tracking Capability for the Elderly at Home

机译:基于红外阵列传感器的秋季检测系统,在家中老年人跟踪能力

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In this paper, a low resolution privacy preserved infrared array sensor is adopted for the applications of the elderly tracking and fall detection. The sensor is composed of a 16 × 4 thermopile array with the corresponding 60° × 16.4° field of view. Each pixel or thermopile element of infrared sensor contains the temperature value. Two infrared sensors are attached to the wall at different places in our system for capturing the three dimensional image information. The foreground of human body is determined by subtracting the image with the background model using the temperature difference characteristic. Using the foreground temperature, the angle of arrival (AOA) from each sensor is obtained. The location is estimated by the AOA based positioning algorithm. The estimated position is passed to the regression model to reduce the positioning error. As a result, the mean error of our tracking algorithm is 13.39 cm. On the other hand, the fall detection algorithm is implemented by extracting the features from the falling action. Two sensors capture the action at the same time. The sensor with larger foreground region is chosen for the feature extraction process. The extracted features are applied to the k-nearest neighbor (k-NN) classification model for the fall detection. In experiment, 80 fall actions and 80 normal actions are collected. Finally, 95.25% sensitivity, 90.75% specificity and 93% accuracy are achieved.
机译:本文采用了一种低分辨密的隐私保存的红外阵列传感器,用于老年人跟踪和坠落检测。传感器由16×4热电堆叠阵列组成,相应的60°×16.4°视野。红外传感器的每个像素或热电孔元件包含温度值。两个红外传感器连接到我们系统中的不同地方的墙壁上,以捕获三维图像信息。使用温度差异特征通过背景模型减去图像来确定人体的前景。使用前景温度,获得来自每个传感器的到达角度(AOA)。该位置由基于AOA的定位算法估算。估计位置将传递给回归模型以减少定位误差。结果,我们的跟踪算法的平均误差为13.39厘米。另一方面,通过从下降动作中提取特征来实现秋季检测算法。两个传感器同时捕获动作。选择具有较大前景区域的传感器以用于特征提取过程。提取的特征应用于用于坠落检测的k最近邻(K-NN)分类模型。在实验中,收集80个秋季行动和80个正常行动。最后,达到95.25%的灵敏度,90.75%特异性和93%的精度。

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