This paper deals with the geometric multi-model fitting from noisy, unstructured point set data (e.g., laser scanned point clouds). We formulate multi-model fitting problem as a sequential decision making process. We then use a deep reinforcement learning algorithm to learn the optimal decisions towards the best fitting result. In this paper, we have compared our method against the state-of-the-art on simulated data. The results demonstrated that our approach significantly reduced the number of fitting iterations
The ability to generate good model hypotheses is in-strumental to accurate and robust geometric mode...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
Procedural model fitting (PMF) is a generalization of classical model fitting and has numerous appli...
Geometry plays an important role in our understanding of the world with its uses spanning multiple ...
We present a novel Quadratic Program (QP) formulation for robust multi-model fitting of geometric st...
Recent works on multimodel fitting are often formulated as an energy minimization task, where the en...
We propose a novel method to fit and segment multistructural data via convex relaxation. Unlike gree...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
Parametric approaches to Learning, such as deep learning (DL), are highly popular in nonlinear regre...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
The ability to generate good model hypotheses is instrumental to accurate and robust geometric model...
The ability to generate good model hypotheses is in-strumental to accurate and robust geometric mode...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
Procedural model fitting (PMF) is a generalization of classical model fitting and has numerous appli...
Geometry plays an important role in our understanding of the world with its uses spanning multiple ...
We present a novel Quadratic Program (QP) formulation for robust multi-model fitting of geometric st...
Recent works on multimodel fitting are often formulated as an energy minimization task, where the en...
We propose a novel method to fit and segment multistructural data via convex relaxation. Unlike gree...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
Parametric approaches to Learning, such as deep learning (DL), are highly popular in nonlinear regre...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
We present a general framework for geometric model fitting based on a set coverage formulation that ...
The ability to generate good model hypotheses is instrumental to accurate and robust geometric model...
The ability to generate good model hypotheses is in-strumental to accurate and robust geometric mode...
We give a formal definition of geometric fitting in a way that suits computer vision applications. W...
Procedural model fitting (PMF) is a generalization of classical model fitting and has numerous appli...