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Grassland habitat mapping by intra-annual time series analysis - Comparison of RapidEye and TerraSAR-X satellite data

机译:跨年代时间序列分析的草地栖息地映射 - 雄益和Terrasar-X卫星数据的比较

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摘要

Remote sensing concepts are needed to monitor open landscape habitats for environmental change and biodiversity loss. However, existing operational approaches are limited to the monitoring of European dry heaths only. They need to be extended to further habitats. Thus far, reported studies lack the exploitation of intra-annual time series of high spatial resolution data to take advantage of the vegetations' phenological differences. In this study, we investigated the usefulness of such data to classify grassland habitats in a nature reserve area in northeastern Germany. Intra-annual time series of 21 observations were used, acquired by a multi-spectral (RapidEye) and a synthetic aperture radar (TerraSAR-X) satellite system, to differentiate seven grassland classes using a Support Vector Machine classifier. The classification accuracy was evaluated and compared with respect to the sensor type - multi-spectral or radar - and the number of acquisitions needed. Our results showed that very dense time series allowed for very high accuracy classifications (>90%) of small scale vegetation types. The classification for TerraSAR-X obtained similar accuracy as compared to RapidEye although distinctly more acquisitions were needed. This study introduces a new approach to enable the monitoring of small-scale grassland habitats and gives an estimate of the amount of data required for operational surveys. (C) 2014 Elsevier B.V. All rights reserved.
机译:需要遥感概念来监测环境变化和生物多样性损失的开放景观栖息地。然而,现有的操作方法仅限于监测欧洲干荒墙。他们需要扩展到进一步的栖息地。到目前为止,报告的研究缺乏对年度时间内序列的高空间分辨率数据的利用,利用植被的鉴生差异。在这项研究中,我们调查了这些数据在德国东北部自然保护区的草地栖息地分类草地栖息地。使用年度时间序列21个观察结果,通过多光谱(Rapideye)和合成孔径雷达(Terrasar-X)卫星系统获得,以使用支持向量机分类器区分七个草地类。评估分类准确度并与传感器类型 - 多光谱或雷达进行比较 - 以及所需的采集次数。我们的研究结果表明,非常高的时间序列允许非常高的精度分类(> 90%)的小规模植被类型。与Rapideye相比,Terrasa-X的分类获得了类似的准确性,但虽然需要清晰更多的收购。本研究介绍了一种新方法,以实现小规模草地栖息地的监测,并估计运营调查所需的数据量。 (c)2014 Elsevier B.v.保留所有权利。

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