Model-based learning for point pattern data
Pattern Recognition2018Vol. 84, pp. 136–151
Citations Over TimeTop 11% of 2018 papers
Abstract
This article proposes a framework for model-based point pattern learning using point process theory. Likelihood functions for point pattern data derived from point process theory enable principled yet conceptually transparent extensions of learning tasks, such as classification, novelty detection and clustering, to point pattern data. Furthermore, tractable point pattern models as well as solutions for learning and decision making from point pattern data are developed.
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