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Imaging air quality evaluation using definition metrics and detrended fluctuation analysis

机译:使用定义度量进行成像空气质量评估,并减少波动分析

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This paper presents a novel image quality evaluation method which addresses the air quality evaluation issue specifically. The fluctuation of the imaging definition can represent the change laws of the air quality indirectly. So, first three types of non-reference Image Quality (IQ) metric, i.e., the contrast, the blur and the noise factors, are computed for each frame of an image sequence to describe the imaging definition. Then we use these discrete IQ data to form their time series data respectively. After that, we use the Detrend Fluctuation Analysis (DFA) technique to mine the laws of fluctuation of those series. Finally, the scaling exponents of the DFA can be used to represent and classify the intensity of fluctuation of the different air quality conditions. The sequences of different atmosphere conditions are used to test the validity our model in this paper.
机译:本文提出了一种新颖的图像质量评估方法,具体地解决了空气质量评估问题。成像定义的波动可以间接地代表空气质量的变化规律。因此,针对图像序列的每帧计算成像定义的每一帧,计算前三种类型的非参考图像质量(IQ)度量(IQ)度量,即对比度,模糊和噪声因子。然后我们使用这些离散的IQ数据分别形成它们的时间序列数据。之后,我们使用DEDREND波动分析(DFA)技术来挖掘这些系列的波动定律。最后,DFA的缩放指数可用于表示和分类不同空气质量条件的波动强度。不同大气条件的序列用于测试本文中的型号的有效性。

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