Raspberry-based Low-resolution Thermal image system using a Smoothing Filter-based Kalman

Miguel Á. López-Pérez, A. Flores-Fuentes, R. Peña-Eguiluz, E. E. Granda-Gutiérrez, J. F. García-Mejía
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Abstract

Since the emergence of global epidemics such as SARS-CoV-2, H1N1, SARS and MERS, a wide range of systems for measuring temperature have been developed based on computer vision to reduce and prevent the virus contagious. By implementing a Raspberry-based Low-resolution embedded system based and a FLIR Lepton® sensor human body temperature is measured and improved by four different algorithms implemented. Firstly, three traditional time-series processes solving such as, Simple Mean (SM), Simple Moving Average (SMA), and Multi Lineal Regression (MLR), and secondly, and online filter-based Kalman predictor were implemented to increase the signal to noise ratio of the acquired temperature magnitude. Results of average prediction for different benchmarks demonstrate the best performance of Kalman Filter upon traditional processes. In addition, this algorithm achieves to smooth output temperature with fewer samples (∼10% of total samples) in comparison MLR and SMA. Finally, Raspberry-based Low-resolution Thermal image system is a feasible tool as a high-speed temperature estimator, by implementation of algorithms codified in Python language.
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基于树莓的低分辨率热图像系统,采用基于平滑滤波的卡尔曼算法
自SARS- cov -2、H1N1、SARS和MERS等全球性流行病出现以来,基于计算机视觉的各种温度测量系统已被开发出来,以减少和预防病毒的传染性。通过实现基于覆盆子的低分辨率嵌入式系统和FLIR Lepton®传感器,通过四种不同的算法实现人体温度的测量和改进。首先,采用简单平均(SM)、简单移动平均(SMA)和多元线性回归(MLR)三种传统的时间序列处理方法,其次,采用基于在线滤波的卡尔曼预测器来提高获取的温度幅度的信噪比。对不同基准的平均预测结果表明,卡尔曼滤波在传统过程中具有最好的性能。此外,与MLR和SMA相比,该算法以更少的样本(约占总样本的10%)实现了平滑的输出温度。最后,基于树莓的低分辨率热图像系统是一种可行的高速温度估计工具,通过实现Python语言编写的算法。
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