Fitting Multiple Heterogeneous Models by Multi-Class Cascaded T-Linkage

CVPR 2019 Luca Magri Andrea Fusiello

This paper addresses the problem of multiple models fitting in the general context where the sought structures can be described by a mixture of heterogeneous parametric models drawn from different classes. To this end, we conceive a multi-model selection framework that extend T-linkage to cope with different nested class of models... (read more)

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