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Exploring high repetitivity remote sensing time series for mapping and monitoring natural habitats — A new approach combining OBIA and k-partite graphs

机译:探索高重复性遥感时间序列以绘制和监测自然栖息地—结合OBIA和k-partite图的新方法

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High repetitivity remote sensing could substantially improve natural habitats monitoring and mapping in the next years. However, dense time series of satellite images require new processing methodologies. In this paper we proposed an approach which combines Object Based Image Analysis (OBIA) and k-partite graphs for detecting spatiotemporal evolutions in a Mediterranean protected site composed of several types of natural and semi-natural habitats. The method was applied over a recent dataset (SPOT4 Take-5) specially conceived to simulate the acquisition frequency of the future Sentinel-2 satellites. The results indicate our method is capable to synthesize complex spatiotemporal evolutions in a semi-automatic way, therefore offering a new tool to analyze high repetitivity satellite time series.
机译:高重复性遥感可以在未来几年内极大地改善自然栖息地的监测和制图。然而,密集的卫星图像时间序列需要新的处理方法。在本文中,我们提出了一种结合基于对象的图像分析(OBIA)和k-partite图的方法,以检测由几种类型的自然和半自然栖息地组成的地中海保护区的时空演变。该方法被应用到最近专门用来模拟未来Sentinel-2卫星的采集频率的数据集(SPOT4 Take-5)上。结果表明,我们的方法能够以半自动方式综合复杂的时空演化,因此为分析高重复性卫星时间序列提供了一种新工具。

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