A convolutional approach to reflection symmetry
About
We present a convolutional approach to reflection symmetry detection in 2D. Our model, built on the products of complex-valued wavelet convolutions, simplifies previous edge-based pairwise methods. Being parameter-centered, as opposed to feature-centered, it has certain computational advantages when the object sizes are known a priori, as demonstrated in an ellipse detection application. The method outperforms the best-performing algorithm on the CVPR 2013 Symmetry Detection Competition Database in the single-symmetry case. Code and a new database for 2D symmetry detection is available.
Marcelo Cicconet, Vighnesh Birodkar, Mads Lund, Michael Werman, Davi Geiger• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Symmetry axis detection | ICCV (test) | AUC (Axis A)80.8 | 5 | |
| Symmetry axis detection | NYU (test) | AUC (A)82.85 | 5 | |
| Symmetry axis detection | SYM_Hard (test) | AUC (A)68.99 | 5 |
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