Remote Sensing Technology and Application, Volume. 39, Issue 5, 1128(2024)
Study on the Effect of Sky Scattered Light on the Reflectance of UAV Hyperspectral about Remote Sensing of Water Color
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Pu ZHONG, Xingjian GUO, Xintong JIANG, Yinghui ZHAI, Hongtao DUAN. Study on the Effect of Sky Scattered Light on the Reflectance of UAV Hyperspectral about Remote Sensing of Water Color[J]. Remote Sensing Technology and Application, 2024, 39(5): 1128
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Received: Dec. 27, 2022
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Published Online: Jan. 7, 2025
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