结合AMSR-E和QuikSCAT图像数据改进海冰分类

P. Yu, David A Clausi, R. de Abreu, T. Agnew
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引用次数: 1

摘要

研究了用QuikSCAT图像数据增强AMSR-E图像数据对北极西部地区监督海冰分类的好处。实验比较了仅使用AMSR-E数据集时最大似然分类器与组合数据集的性能,并检查了要使用的首选特征数量以及随时间推移训练数据的可靠性。添加QuikSCAT通常以统计学上显著的方式提高分类器的准确性,并且在使用足够的特征时不会显着降低分类器的准确性。结合这些数据集有利于海冰制图。建议使用所有可用的功能,并且特定日期的训练数据在30天内保持可靠。
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Combining AMSR-E and QuikSCAT image data to improve sea ice classification
The benefits of augmenting AMSR-E image data with QuikSCAT image data for supervised sea ice classification in the Western Arctic region are investigated. Experiments compared the performance of a maximum likelihood classifier when used with the AMSR-E only data set against the combined data and examined the preferred number of features to use as well as the reliability of training data over time. Adding QuikSCAT often improves classifier accuracy in a statistically significant manner and never decreased it significantly when enough features are used. Combining these data sets is beneficial for sea ice mapping. Using all available features is recommended and training data from a specific date remains reliable within 30 days.
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