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Implications of JPEG2000 lossy compression on multiple regression modelling

机译:JPEG2000有损压缩对多元回归建模的影响

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摘要

Multiple regression is a common technique used when performing digital analysis on images to obtain continuous, quantitative, variables (as temperature, biomass, etc). In this scenario pixels are treated as samples from which several independent variables are known; when remote sensing images are available, the different spectral bands offered by a given sensor are often used as independent variables. The dependent variable is also a quantitative variable, such as a forest inventory variable or a climate variable (e.g., temperature). This paper presents an evaluation of the implications of JPEG2000 lossy compression when applied to these regression processes. Annual minimum and annual mean air temperature are modelled using two methods according to the independent variables used: only geographical, and geographical and remote sensing images as independent variables. Raster matrix representing independent variables were compressed using compression ratios from 50% up to 0.01% of the original file size. Results have revealed that, even at high compression ratios, practically the same accuracy, measured with independent reference climatic stations, is obtained, so JPEG2000 seems an interesting technique not heavily affecting these common modelling approaches.
机译:多元回归是对图像进行数字分析以获得连续,定量,变量(如温度,生物量等)时常用的技术。在这种情况下,像素被视为样本,从中可以知道几个独立变量。当可获得遥感图像时,通常将给定传感器提供的不同光谱带用作自变量。因变量也是定量变量,例如森林清单变量或气候变量(例如温度)。本文介绍了将JPEG2000有损压缩应用于这些回归过程时的含义。根据所使用的自变量,使用两种方法对年度最低和年度平均气温进行建模:仅将地理,地理和遥感影像作为自变量。使用从原始文件大小的50%到0.01%的压缩率压缩代表自变量的栅格矩阵。结果表明,即使在高压缩比的情况下,也可以使用独立的参考气候站测得的精度几乎相同,因此JPEG2000似乎是一种有趣的技术,不会严重影响这些常见的建模方法。

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