A Sparse Resultant Based Method For Efficient Minimal Solvers

2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2020)

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摘要
Many computer vision applications require robust and efficient estimation of camera geometry. The robust estimation is usually based on solving camera geometry problems from a minimal number of input data measurements, i.e. solving minimal problems in a RANSAC framework. Minimal problems often result in complex systems of polynomial equations. Many state-of-the-art efficient polynomial solvers to these problems are based on Grobner bases and the actionmatrix method that has been automated and highly optimized in recent years. In this paper we study an alternative algebraic method for solving systems of polynomial equations, i.e., the sparse resultant-based method and propose a novel approach to convert the resultant constraint to an eigenvalue problem. This technique can significantly improve the efficiency and stability of existing resultant-based solvers. We applied our new resultant-based method to a large variety of computer vision problems and show that for most of the considered problems, the new method leads to solvers that are the same size as the the best available Grobner basis solvers and of similar accuracy. For some problems the new sparse-resultant based method leads to even smaller and more stable solvers than the state-of-the-art Grobner basis solvers. Our new method can be fully automated and incorporated into existing tools for automatic generation of efficient polynomial solvers and as such it represents a competitive alternative to popular Grobner basis methods for minimal problems in computer vision.
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eigenvalue problem,stability,existing resultant-based solvers,computer vision problems,considered problems,available Gröbner basis solvers,sparse-resultant based method,smaller solvers,more stable solvers,state-of-the-art Gröbner basis solvers,popular Gröbner basis methods,minimal problems,efficient minimal solvers,computer vision applications,robust estimation,camera geometry problems,polynomial equations,state-of-the-art efficient polynomial solvers,action-matrix method,alternative algebraic method,sparse resultant-based method,resultant constraint
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