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A swap randomization approach for mining motion field time series over the Argentiere glacier

机译:一种交换随机化方法,用于挖掘阿根廷冰川上的运动场时间序列

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Grouped Frequent Sequential patterns can be extracted in an unsupervised way from Image Time Series (ITS). Plotting the occurrence maps of these patterns allows to describe the dataset spatially and temporally while discarding random uncertainties. However these maps can be too numerous and a swap randomization ranking approach has been proposed recently to select the most promising patterns. This previous work experimented the technique on Satellite ITS, giving credit to the maps that are least likely to appear on a randomized ITS. In this paper, extraction and ranking of GFS patterns is performed on a motion field time series obtained by terrestrial photogrammetry over the Argentière glacier. The focus is extended to the maps that are most likely to occur on the randomized time series and the experiment is repeated thousand times to assess the stability of the ranking.
机译:可以从图像时间序列(ITS)中以无监督的方式提取分组的频繁序列模式。绘制这些模式的出现图可以在不考虑随机不确定性的情况下在空间和时间上描述数据集。但是,这些图可能太多,最近提出了一种交换随机排序方法来选择最有希望的模式。先前的工作在卫星ITS上对该技术进行了实验,从而使那些最不可能出现在随机ITS上的地图获得了好评。在本文中,GFS模式的提取和排序是通过在阿根廷冰川上通过地面摄影测量获得的运动场时间序列执行的。重点扩展到最有可能在随机时间序列上发生的地图,并且实验重复了数千次以评估排名的稳定性。

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