Object-oriented crop classification using multitemporal ETM+ SLC-off imagery and random forest
نویسندگان
چکیده
Object-oriented crop classification using multitemporal ETM+ SLC-off imagery and random forest John A. Long a , Rick L. Lawrence a , Mark C. Greenwood b , Lucy Marshall a & Perry R. Miller a a Department of Land Resources and Environmental Sciences , Montana State University , P.O. Box 173120, Bozeman , MT , 59715-3120 , USA b Department of Mathematical Sciences , Montana State University , Bozeman , MT , 59715-3120 , USA Published online: 23 Jul 2013.
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