首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Glacier surface velocity estimation using repeat TerraSAR-X images: Wavelet- vs. correlation-based image matching
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Glacier surface velocity estimation using repeat TerraSAR-X images: Wavelet- vs. correlation-based image matching

机译:使用重复的TerraSAR-X图像估算冰川表面速度:基于小波与相关的图像匹配

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For the observation and monitoring of glacier surface velocity (GSV), remote sensing is an increasingly suitable tool thanks to the high temporal and spatial resolution of the data. Radar sensors have the specific advantage over optical sensors of being nearly weather and time-independent. Two image pairs separated by 11 days, acquired with the high-resolution spotlight (HS) and stripmap (SM) modes of the German sensor TerraSAR-X, were used to estimate GSV over Switzerland's Aletsch Glacier. The SM mode covers larger ground swaths, making it more suitable for glacier-wide observations, while the HS images cover less area but offer the highest-possible spatial resolution, approximately 1×1 m on the ground. The images were acquired during the summer to maximise feature visibility by minimal snow cover. GSV estimation was performed using two methods, the comparison of which was a major goal of this study: traditional cross-correlation optimisation and a dense image matching algorithm based on complex wavelet decomposition. Each method was found to have unique advantages and disadvantages, but it was concluded that for GSV monitoring, cross-correlation is probably preferable to the wavelet-based approach. While it generates fewer estimates per unit area, this is not necessarily a critical requirement for all glaciological applications, and the method requires less initial "tuning" (calibration) than the wavelet algorithm, making it a slightly better tool in operational contexts. Also, the use of the highest-resolution spotlight datasets is recommended over stripmap mode images when large-area coverage is less critical. The comparative lack of visible features at the resolution of the stripmap images made reliable GSV estimation difficult, with the exception of several small areas dominated by large crevasses.
机译:对于冰川表面速度(GSV)的观测和监视,由于数据的高时空分辨率,遥感已成为一种越来越合适的工具。与光学传感器相比,雷达传感器具有几乎不受天气和时间影响的特定优势。使用德国传感器TerraSAR-X的高分辨率聚光(HS)和带状图(SM)模式采集的两对图像,每隔11天间隔一圈,用于估算瑞士Aletsch冰川的GSV。 SM模式覆盖了较大的地带,使其更适合冰川范围的观测,而HS图像覆盖的区域较小,但提供了可能的最高空间分辨率,大约为地面1×1 m。这些图像是在夏季采集的,以通过最小的积雪来最大化特征的可见性。使用两种方法进行GSV估计,二者的比较是本研究的主要目标:传统互相关优化和基于复杂小波分解的密集图像匹配算法。人们发现每种方法都有其独特的优缺点,但得出的结论是,对于GSV监视,互相关可能比基于小波的方法更可取。尽管它产生的单位面积的估计更少,但这并不一定对所有冰川学应用都是至关重要的,并且该方法比小波算法需要更少的初始“调整”(校准),使其在操作环境中成为更好的工具。另外,在大面积覆盖不太关键的情况下,建议在带状图模式图像上使用最高分辨率的聚光灯数据集。带状图图像的分辨率上相对缺乏可见特征,使得可靠的GSV估计变得困难,除了几个由大裂缝控制的小区域。

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