首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Object-based landfast sea ice detection over West Antarctica using time series ALOS PALSAR data
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Object-based landfast sea ice detection over West Antarctica using time series ALOS PALSAR data

机译:基于对象的地雷海冰在西南极洲使用时间序列Alos Palsar数据检测

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摘要

Landfast sea ice (fast ice) is an important feature prevalent around the Antarctic coast, which is affected by climate change and energy exchanges with the atmosphere and ocean. This study proposed a method for detection of the West Antarctic fast ice using the Advanced Land Observing Satellite Phased Array L-band SAR (ALOS PALSAR) images. The algorithm has combined image segmentation, image correlation analysis, and machine learning techniques (i.e., random forest (RF), extremely randomized trees (ERT), and logistic regression (LR)). We used SAR images with a baseline of 5 days that are not in the same orbit but overlap each other as overlaps between swaths in adjacent orbits are often available in the polar regions. The underlying assumption for the proposed fast ice detection algorithm is that fast ice regions in SAR images with a time interval of 5 days are highly correlated. The object-based approach proposed in this study was well suited to high-resolution SAR images in deriving spatially homogeneous fast ice regions. The image segmentation results using the optimized parameters showed a distinct difference in the backscatter temporal evolution between fast ice and pack ice regions. Correlation and STD of backscattering coefficients were found to be the most significant variables for the object-based fast ice detection from two temporally separated images. In overall, the quantitative and qualitative evaluation demonstrated that the algorithm was an effective approach to detect fast ice with high accuracies. The models well detected various fast ice regions in the West Antarctica but misclassified some objects. The misclassifications occurred toward the edge of fast ice regions with relatively rapid changes in backscattering between both data acquisitions. On the other hand, few fast ice objects were misclassified as uniform backscattering over time occurred by chance on very small objects far from the coast. Very old multi-year fast ice regions with high backscattered signals were also a source for some misclassifications. This may be due to the sensitivity of L-band to snow structure to some extent and a thinner ice over the region with either ice growth (no deformation) or closing (slight deformation) between both images. Heavy snow load on the ice could be another error source for some misclassification as well. The approach allowed for the reliable detection of fast ice regions by using L-band SAR images with a small local incidence angle difference.
机译:陆地海冰(快速冰)是南极海岸周围普遍的重要特征,受气候变化和与大气和海洋的能源交流的影响。本研究提出了一种使用先进的土地观察卫星相控阵L波段SAR(ALOS PALSAR)图像检测西南南极快速冰的方法。该算法具有组合图像分割,图像相关分析和机器学习技术(即随机林(RF),极其随机树(ert)和逻辑回归(LR))。我们使用的是具有5天的基线的SAR图像,其不在同一个轨道中,而是彼此重叠,因为相邻轨道之间的条子之间的重叠通常在极地区域中可用。所提出的快速冰检测算法的潜在假设是SAR图像中的快速冰区域,其时间间隔为5天的时间间隔高度相关。本研究中提出的基于对象的方法非常适合于在空间均匀的快速冰区进行高分辨率SAR图像。使用优化参数的图像分割结果显示了快速冰和包装冰区之间的反向散射时间演进中的明显差异。发现反向散射系数的相关性和STD是来自两个时间分离图像的基于对象的快速冰检测最重要的变量。总的来说,定量和定性评估证明了该算法是检测具有高精度冰的有效方法。模型在西南极洲的各种快速冰区中检测到了各种快速冰区,但错误分类了一些物体。在数据采集之间具有相对快速的变化的快速冰区边缘发生错误分类。另一方面,很少有快速的冰对象被错误分类为随着时间的推移发生均匀的反向散射,而在远离海岸的非常小的物体上发生。非常旧的多年快速冰块,具有高背散射信号也是一些错误分类的源。这可能是由于L波段在某种程度上与雪结构的敏感性和在两个图像之间具有冰增长(无变形)或关闭(轻微变形)的区域上的较薄冰。冰上的大雪负荷可能是一些错误分类的另一个错误源。通过使用具有小局部入射角差的L波段SAR图像允许的方法可靠地检测快速冰区域。

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