BIG IMAGERY AND HIGH PERFORMANCE COMPUTING AS RESOURCES TO UNDERSTAND CHANGING ARCTIC POLYGONAL TUNDRA

C. Witharana, M. A. R. Bhuiyan, A. Liljedahl
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引用次数: 3

Abstract

Abstract. Permafrost thaw has been observed at several locations across the Arctic tundra in recent decades; however, the pan-Arctic extent and spatiotemporal dynamics of thaw remains poorly explained. Thaw-induced differential ground subsidence and dramatic microtopographic transitions, such as transformation of low-centered ice-wedge polygons (IWPs) into high-centered IWPs can be characterized using very high spatial resolution (VHSR) commercial satellite imagery. Arctic researchers demand for an accurate estimate of the distribution of IWPs and their status across the tundra domain. The entire Arctic has been imaged in 0.5 m resolution by commercial satellite sensors; however, mapping efforts are yet limited to small scales and confined to manual or semi-automated methods. Knowledge discovery through artificial intelligence (AI), big imagery, and high performance computing (HPC) resources is just starting to be realized in Arctic science. Large-scale deployment of VHSR imagery resources requires sophisticated computational approaches to automated image interpretation coupled with efficient use of HPC resources. We are in the process of developing an automated Mapping Application for Permafrost Land Environment (MAPLE) by combining big imagery, AI, and HPC resources. The MAPLE uses deep learning (DL) convolutional neural nets (CNNs) algorithms on HPCs to automatically map IWPs from VHSR commercial satellite imagery across large geographic domains. We trained and tasked a DLCNN semantic object instance segmentation algorithm to automatically classify IWPs from VHSR satellite imagery. Overall, our findings demonstrate the robust performances of IWP mapping algorithm in diverse tundra landscapes and lay a firm foundation for its operational-level application in repeated documentation of circumpolar permafrost disturbances.
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大图像和高性能计算作为了解北极多边形苔原变化的资源
摘要近几十年来,在北极冻土带的几个地点观测到永久冻土融化;然而,对泛北极范围和融冰时空动态的解释仍然很差。利用甚高空间分辨率(VHSR)商业卫星图像,可以对融化引起的差异地面沉降和急剧的微地形转变(如低中心冰楔多边形向高中心冰楔多边形的转变)进行表征。北极研究人员要求对IWPs的分布及其在冻原地区的状况进行准确的估计。整个北极已被商业卫星传感器以0.5米的分辨率成像;然而,测绘工作仍然局限于小尺度,局限于手动或半自动化的方法。通过人工智能(AI)、大图像和高性能计算(HPC)资源进行知识发现,在北极科学领域才刚刚开始实现。VHSR图像资源的大规模部署需要复杂的计算方法来实现自动图像判读,并有效利用HPC资源。我们正在结合大图像、人工智能和高性能计算资源开发永久冻土环境自动测绘应用程序(MAPLE)。MAPLE在hpc上使用深度学习(DL)卷积神经网络(cnn)算法,从VHSR商业卫星图像中自动映射跨大地理域的iwp。我们训练并执行了一种DLCNN语义对象实例分割算法,用于对VHSR卫星图像中的iwp进行自动分类。总的来说,我们的研究结果证明了IWP映射算法在不同冻土带景观中的强大性能,并为其在极地冻土扰动的重复记录中的操作级应用奠定了坚实的基础。
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