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A Contactless Measuring Method of Skin Temperature based on the Skin Sensitivity Index and Deep Learning

机译:基于皮肤敏感性指标和深度学习的皮肤温度非接触式测量方法

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摘要

In human-centered intelligent building, real-time measurements of human thermal comfort play critical roles and supply feedback control signals for building heating, ventilation, and air conditioning (HVAC) systems. Due to the challenges of intra- and inter-individual differences and skin subtleness variations, there has not been any satisfactory solution for thermal comfort measurements until now. In this paper, a contactless measuring method based on a skin sensitivity index and deep learning (NISDL) was proposed to measure real-time skin temperature. A new evaluating index, named the skin sensitivity index (SSI), was defined to overcome individual differences and skin subtleness variations. To illustrate the effectiveness of SSI proposed, a two multi-layers deep learning framework (NISDL method I and II) was designed and the DenseNet201 was used for extracting features from skin images. The partly personal saturation temperature (NIPST) algorithm was use for algorithm comparisons. Another deep learning algorithm without SSI (DL) was also generated for algorithm comparisons. Finally, a total of 1.44 million image data was used for algorithm validation. The results show that 55.62% and 52.25% error values (NISDL method I, II) are scattered at (0 °C, 0.25 °C), and the same error intervals distribution of NIPST is 35.39%.
机译:在以人为本的智能建筑中,人类热舒适性的实时测量起到关键作用以及供应反馈控制信号,用于建造加热,通风和空调(HVAC)系统。由于内部间差异和皮肤细胞间变化的挑战,直到现在地存在热舒适度量的任何令人满意的解决方案。本文提出了一种基于皮肤敏感性指数和深度学习(NISDL)的非接触式测量方法来测量实时肌肤温度。定义了一个名为Skin Sensitive Index(SSI)的新评估指数以克服各个差异和皮肤细节变化。为了说明所提出的SSI的有效性,设计了两个多层深度学习框架(NISDL方法I和II),并且DenSenet201用于从皮肤图像中提取特征。部分个人饱和温度(NIPST)算法用于算法比较。还为算法比较生成了没有SSI(DL)的另一种深入学习算法。最后,总共144万个图像数据用于算法验证。结果表明,55.62%和52.25%误差值(NISDL方法I,II)散落在(0°C,0.25°C),镍镉的相同误差间隔分布为35.39%。

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