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Geostatistical analysis of Landsat-TM lossy compression images in a High Performance Computing environment

机译:高性能计算环境中Landsat-TM损耗压缩图像的地质统计分析

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The main goal of this study is to characterize the effects of lossy image compression procedures on the spatial patterns of remotely sensed images, as well as to test the performance of job distribution tools specifically designed for obtaining geostatistical parameters (variogram) in a High Performance Computing (HPC) environment. To this purpose, radiometrically and geometrically corrected Landsat-5 TM images from April, July, August and September 2006 were compressed using two different methods: Band-Independent Fixed-Rate (BIFR) and three-dimensional Discrete Wavelet Transform (3d-DWT) applied to the JPEG 2000 standard. For both methods, a wide range of compression ratios (2.5:1, 5:1, 10:1, 50:1, 100:1, 200:1 and 400:1, from soft to hard compression) were compared. Variogram analyses conclude that all compression ratios maintain the variogram shapes and that the higher ratios (more than 100:1) reduce variance in the sill parameter of about 5percent. Moreover, the parallel solution in a distributed environment demonstrates that HPC offers a suitable scientific test bed for time demanding execution processes, as in geostatistical analyses of remote sensing images.
机译:本研究的主要目的是表征有损图像压缩过程对远程感测图像的空间模式的影响,以及测试专门设计用于在高性能计算中获得地质统计参数(变型函数)的作业分配工具的性能(HPC)环境。为此目的,从4月,7月,8月和2006年4月的覆盖物和几何纠正的Landsat-5 TM图像使用两种不同的方法压缩:带独立的固定速率(BIFR)和三维离散小波变换(3D-DWT)应用于JPEG 2000标准。对于这两种方法,比较了各种压缩比(2.5:1,5:1,10:1,50:1,100:1,200:1和400:1,从软到硬质压缩)进行了比较。变形仪分析得出结论,所有压缩比保持变形仪形状,并且更高的比率(超过100:1)降低大约5平方的Sill参数的方差。此外,分布式环境中的并行解决方案表明,HPC为时间苛刻的执行过程提供了合适的科学试验台,如遥感图像的地质统计分析中。

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