首页> 外文会议>Conference on SAR image analysis, modeling, and techniques >Intermittent Small Baseline Subset (ISBAS) monitoring of land covers unfavourable for conventional C-band InSAR: proof-of-concept for peatland environments in north Wales, UK
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Intermittent Small Baseline Subset (ISBAS) monitoring of land covers unfavourable for conventional C-band InSAR: proof-of-concept for peatland environments in north Wales, UK

机译:间歇性小基线子集(ISBAS)的土地覆盖监测不利于常规C波段InSAR:英国北威尔士泥炭地环境的概念验证

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This paper provides a proof-of-concept for the use of the new Intermittent Small Baseline Subset (ISBAS) approach to study ground elevation changes in areas of peat and organic soils in north Wales, which are generally, unfavourable for conventional C-band interferometric applications. A stack of 53 ERS-1/2 C-band SAR scenes acquired between 1993 and 2000 in descending mode was processed with both the standard low-pass SBAS method and ISBAS. The latter revealed exceptional improvements in the coverage of ground motion solutions with respect to the standard approach. The number of identified coherent and intermittently coherent pixels increased by a factor of 26 with respect to the SBAS solution, and extended the coverage of results across unfavourable land covers, particularly for coniferous woodland, bog, acid grassland and heather. The greatest increase was achieved over coniferous woodland, which showed ISBAS/SBAS pixel density ratios above 300. Despite the intermittent nature of the ISBAS solutions, ISBAS provided velocity standard errors generally below 1-1.5 mm/yr, thus preserving good quality of the estimated ground motion rates.
机译:本文为使用新的间歇性小基线子集(ISBAS)方法研究威尔士北部威尔士泥炭和有机土壤区域的地面高程变化提供了概念验证,这通常不利于常规C波段干涉仪应用程序。使用标准低通SBAS方法和ISBAS处理了1993年至2000年之间以下降模式采集的53个ERS-1 / 2 C波段SAR场景。后者显示出与标准方法相比,地面运动解决方案的覆盖范围得到了极大的改善。相对于SBAS解决方案,已识别的相干和间歇性相干像素的数量增加了26倍,并且将结果覆盖范围扩展到了不利的土地覆盖范围,尤其是针叶林,沼泽,酸性草原和石南花。针叶林地的增幅最大,表明ISBAS / SBAS像素密度比大于300。尽管ISBAS解决方案具有间歇性,但ISBAS提供的速度标准误差通常在1-1.5 mm / yr以下,因此保持了估算结果的良好质量。地面运动速度。

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