Aligning Partially Overlapping Point Sets: an Inner Approximation Algorithm

07/05/2020
by   Wei Lian, et al.
23

Aligning partially overlapping point sets where there is no prior information about the value of the transformation is a challenging problem in computer vision. To achieve this goal, we first reduce the objective of the robust point matching algorithm to a function of a low dimensional variable. The resulting function, however, is only concave over a finite region including the feasible region. To cope with this issue, we employ the inner approximation optimization algorithm which only operates within the region where the objective function is concave. Our algorithm does not need regularization on transformation, and thus can handle the situation where there is no prior information about the values of the transformations. Our method is also ϵ-globally optimal and thus is guaranteed to be robust. Moreover, its most computationally expensive subroutine is a linear assignment problem which can be efficiently solved. Experimental results demonstrate the better robustness of the proposed method over state-of-the-art algorithms. Our method is also efficient when the number of transformation parameters is small.

READ FULL TEXT
research
01/04/2017

A Concave Optimization Algorithm for Matching Partially Overlapping Point Sets

Point matching refers to the process of finding spatial transformation a...
research
01/19/2021

Hybrid Trilinear and Bilinear Programming for Aligning Partially Overlapping Point Sets

Alignment methods which can handle partially overlapping point sets and ...
research
01/04/2017

Path-following based Point Matching using Similarity Transformation

To address the problem of 3D point matching where the poses of two point...
research
11/04/2014

A Robust Point Sets Matching Method

Point sets matching method is very important in computer vision, feature...
research
01/06/2020

Frequency Fitness Assignment: Making Optimization Algorithms Invariant under Bijective Transformations of the Objective Function

Under Frequency Fitness Assignment (FFA), the fitness corresponding to a...
research
12/13/2022

A (Slightly) Improved Deterministic Approximation Algorithm for Metric TSP

We show that the max entropy algorithm can be derandomized (with respect...
research
10/31/2018

Scalable Laplacian K-modes

We advocate Laplacian K-modes for joint clustering and density mode find...

Please sign up or login with your details

Forgot password? Click here to reset