Sparse resultant based minimal solvers in computer vision and their connection with the action matrix

01/16/2023
by   Snehal Bhayani, et al.
0

Many computer vision applications require robust and efficient estimation of camera geometry from a minimal number of input data measurements, ie, solving minimal problems in a RANSAC framework. Minimal problems are usually formulated as complex systems of polynomial equations. Many state-of-the-art efficient polynomial solvers are based on the action matrix method that has been automated and highly optimised in recent years. In this paper we explore the theory of sparse resultants for generating minimal solvers and propose a novel approach based on a using an extra polynomial with a special form. We show that for some camera geometry problems our extra polynomial-based method leads to smaller and more stable solvers than the state-of-the-art Gröbner basis-based solvers. The proposed method can be fully automated and incorporated into existing tools for automatic generation of efficient polynomial solvers. It provides a competitive alternative to popular Gröbner basis-based methods for minimal problems in computer vision. Additionally, we study the conditions under which the minimal solvers generated by the state-of-the-art action matrix-based methods and the proposed extra polynomial resultant-based method, are equivalent. Specifically we consider a step-by-step comparison between the approaches based on the action matrix and the sparse resultant, followed by a set of substitutions, which would lead to equivalent minimal solvers.

READ FULL TEXT
research
12/21/2019

A sparse resultant based method for efficient minimal solvers

Many computer vision applications require robust and efficient estimatio...
research
07/17/2020

Computing stable resultant-based minimal solvers by hiding a variable

Many computer vision applications require robust and efficient estimatio...
research
03/12/2018

Beyond Gröbner Bases: Basis Selection for Minimal Solvers

Many computer vision applications require robust estimation of the under...
research
04/24/2020

GAPS: Generator for Automatic Polynomial Solvers

Minimal problems in computer vision raise the demand of generating effic...
research
07/01/2023

Automatic Solver Generator for Systems of Laurent Polynomial Equations

In computer vision applications, the following problem often arises: Giv...
research
02/11/2018

QRkit: Sparse, Composable QR Decompositions for Efficient and Stable Solutions to Problems in Computer Vision

Embedded computer vision applications increasingly require the speed and...
research
07/08/2010

Improved RANSAC performance using simple, iterative minimal-set solvers

RANSAC is a popular technique for estimating model parameters in the pre...

Please sign up or login with your details

Forgot password? Click here to reset