E. Figure, Window detection results on the ECP CVPR 2010 dataset. The first row shows the input quadrilaterals and the second row shows the window detection results

E. Figure, Window detection results on the ECP Benchmark 2011 dataset. The odd rows show the input quadrilaterals and the even rows show the window detection results

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset, p.169

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset, p.171

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset, p.173

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset, p.175

F. Figure, The results of the parsing algorithm on the ECP Benchmark 2011 dataset

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