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基于极化分解和集成学习的影像分类(5)

来源:遥感学报 【在线投稿】 栏目:期刊导读 时间:2021-03-07
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摘要:[1] Wang Yan, He Chu, Liu Xinlong, et al. A hierarchical fully convolutional network integrated with sparse and low-rank subspace representations for PolSAR imagery classification[J]. Remote Sensing,

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