Spatiotemporal Evolution of Urban Expansion Using Landsat Time Series Data and Assessment of Its Influences on Forests
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Meng Zhang | Hua Liu | Xuejian Li | Huaqiang Du | Zihao Huang | Fangjie Mao | Guomo Zhou | Luofan Dong | Junlong Zheng | Di’en Zhu | Shaobai He | H. Du | Guomo Zhou | Fangjie Mao | Xuejian Li | Di'en Zhu | Junlong Zheng | Luofan Dong | Meng Zhang | Zihao Huang | Shaobai He | Hua Liu
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