Detecting Human Interventions on the Landscape: KAZE Features, Poisson Point Processes, and a Construction Dataset

29 Mar 2017 Edward Boyda Colin McCormick Dan Hammer

We present an algorithm capable of identifying a wide variety of human-induced change on the surface of the planet by analyzing matches between local features in time-sequenced remote sensing imagery. We evaluate feature sets, match protocols, and the statistical modeling of feature matches... (read more)

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