A Weak Structure Model for Regular Pattern Recognition Applied to Facade Images

Radim Tylecek
CMP Prague, Czech Republic

We propose a novel method for recognition of structured images and demonstrate it on recognition of windows in facade images. Given an ability to obtain local low-level data evidence on primitive elements of a structure (like window), we determine their most probable number, attribute values (location, size) and neighborhood relation. The embedded structure is weakly modeled by pair-wise attribute constraints, which allow structure and attribute constraints to mutually support each other. We use a very general framework of reversible jump MCMC, which allows simple implementation of a specific structure model and plug-in of almost arbitrary element classifiers. We demonstrate that the result is an efficient algorithm achieving the performance of other strongly informed methods for regular structures like grids, while our general model covers loosely regular configurations as well.