Lattice Identification and Separation: Theory and Algorithm

19 Dec 2018Yuchen HeSung Ha Kang

Motivated by lattice mixture identification and grain boundary detection, we present a framework for lattice pattern representation and comparison, and propose an efficient algorithm for lattice separation. We define new scale and shape descriptors, which helps to considerably reduce the size of equivalence classes of lattice bases... (read more)

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