Combining Remote-Sensing-Derived Data and Historical Maps for Long-Term Back-Casting of Urban Extents
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Craig A. Knoblock | Stefan Leyk | Johannes H. Uhl | Weiwei Duan | Zekun Li | Basel Shbita | Yao-Yi Chiang | Basel Shbita | S. Leyk | Weiwei Duan | Zekun Li | Yao-Yi Chiang
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