资源论文Deformed Lattice Discovery Via Efficient Mean-Shift Belief Propagation

Deformed Lattice Discovery Via Efficient Mean-Shift Belief Propagation

2020-03-30 | |  69 |   55 |   0

Abstract

We introduce a novel framework for automatic detection of repeated patterns in real images. The novelty of our work is to formulate the extraction of an underlying deformed lattice as a spatial, multi-target tracking problem using a new and efficient Mean-Shift Belief Propagation (MSBP) method. Compared to existing work, our approach has multiple advantages, including: 1) incorporating higher order constraints early-on to propose highly plausible lattice points; 2) growing a lattice in multiple directions simultaneously instead of one at a time sequentially; and 3) achieving more efficient and more accurate performance than state-of- the-art algorithms. These advantages are demonstrated by quantitative experimental results on a diverse set of real world photos.

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