Region-based correspondence (RBC) is a highly relevant and non-trivial computer vision problem. Given two 3D shapes, RBC seeks segments/regions on these shapes that can be reliably put in correspondence. The problem thus consists both in finding the regions and determining the cor- respondences between them. This problem statement is sim- ilar to that of “biclustering”, implying that RBC can be cast as a biclustering problem. Here, we exploit this implication by tackling RBC via a novel biclustering approach, called S 4B (spatially smooth spike and slab biclustering), which: (i) casts the problem in a probabilistic low-rank matrix fac- torization perspective; (ii) uses a spike and slab prior to induce sparsity; (iii) is enriched with a spatial smoothness prior, based on geodesic distances, encouraging nearby vertices to belong to the same bicluster. This type of spatial prior cannot be used in classical biclustering techniques. We test the proposed approach on the FAUST dataset, out- performing both state-of-the-art RBC techniques and clas- sical biclustering methods.

Denitto, M., Melzi, S., Bicego, M., Castellani, U., Farinelli, A., Figueiredo, M., et al. (2017). Region-Based Correspondence Between 3D Shapes via Spatially Smooth Biclustering. In 2017 IEEE International Conference on Computer Vision (ICCV) (pp.4270-4279). Institute of Electrical and Electronics Engineers [10.1109/ICCV.2017.457].

Region-Based Correspondence Between 3D Shapes via Spatially Smooth Biclustering

Melzi, S;
2017

Abstract

Region-based correspondence (RBC) is a highly relevant and non-trivial computer vision problem. Given two 3D shapes, RBC seeks segments/regions on these shapes that can be reliably put in correspondence. The problem thus consists both in finding the regions and determining the cor- respondences between them. This problem statement is sim- ilar to that of “biclustering”, implying that RBC can be cast as a biclustering problem. Here, we exploit this implication by tackling RBC via a novel biclustering approach, called S 4B (spatially smooth spike and slab biclustering), which: (i) casts the problem in a probabilistic low-rank matrix fac- torization perspective; (ii) uses a spike and slab prior to induce sparsity; (iii) is enriched with a spatial smoothness prior, based on geodesic distances, encouraging nearby vertices to belong to the same bicluster. This type of spatial prior cannot be used in classical biclustering techniques. We test the proposed approach on the FAUST dataset, out- performing both state-of-the-art RBC techniques and clas- sical biclustering methods.
paper
computer vision; pattern recognition; biclustering
English
16th IEEE International Conference on Computer Vision, ICCV 2017
2017
2017 IEEE International Conference on Computer Vision (ICCV)
978-1-5386-1032-9
2017
2017-
4270
4279
8237719
reserved
Denitto, M., Melzi, S., Bicego, M., Castellani, U., Farinelli, A., Figueiredo, M., et al. (2017). Region-Based Correspondence Between 3D Shapes via Spatially Smooth Biclustering. In 2017 IEEE International Conference on Computer Vision (ICCV) (pp.4270-4279). Institute of Electrical and Electronics Engineers [10.1109/ICCV.2017.457].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/350436
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