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Parallel spatiotemporal autocorrelation and visualization system for large-scale remotely sensed images

机译:大规模遥感影像的并行时空自相关和可视化系统

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摘要

Current studies on large-scale remotely sensed images are of great national importance for monitoring and evaluating global climate and ecological changes. In particular, real time distributed high-performance visualization and computation have become indispensable research components in facilitating the extraction of remotely sensed image textures to enable mining spatiotemporal patterns and dynamics of landscapes from massive geo-digital information collected from satellites. Remotely sensed images are usually highly correlated with rich landscape features. By exploiting the structures of these images and extracting their textures, fundamental insights of the landscape can be derived. Furthermore, the interdisciplinary collaboration on the remotely sensed image analysis demands multifarious expertise in a wide spectrum of fields including geography, computer science, and engineering.
机译:当前关于大规模遥感图像的研究对于监测和评估全球气候和生态变化具有重要的国家意义。尤其是,实时分布式高性能可视化和计算已成为必不可少的研究组件,有助于促进遥感图像纹理的提取,从而能够从卫星收集的大量地理数字信息中挖掘时空模式和景观动态。遥感图像通常与丰富的景观特征高度相关。通过利用这些图像的结构并提取其纹理,可以得出景观的基本见解。此外,在遥感图像分析方面的跨学科合作需要在地理,计算机科学和工程学等广泛领域的专业知识。

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