Remote Sensing Technology and Application, Volume. 39, Issue 3, 612(2024)
Recognition of Typical Objects in Chemical Industry Parks Using BASS-Net based on High-resolution Remote Sensing Images
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Weiwei SUN, Jie LIU, Fangfang ZHANG, Haiyi MA, Changkun WANG, Xianzhang PAN. Recognition of Typical Objects in Chemical Industry Parks Using BASS-Net based on High-resolution Remote Sensing Images[J]. Remote Sensing Technology and Application, 2024, 39(3): 612
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Received: Oct. 13, 2022
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Published Online: Dec. 9, 2024
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