journal article Oct 17, 2019

Image classification based on the linear unmixing and GEOBIA

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Published
Oct 17, 2019
Vol/Issue
191(11)
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Funding
National Natural Science Foundation of China Award: 31870620
Cite This Article
Chen Liping, Sajjad Saeed, Sun Yujun (2019). Image classification based on the linear unmixing and GEOBIA. Environmental Monitoring and Assessment, 191(11). https://doi.org/10.1007/s10661-019-7837-x