We study the Perspective-n-Point (PNP) problem, which is fundamental in 3D vision, for the recovery of camera translation and rotation. A common solution applies polynomial sum-of-squares (SOS) relaxation techniques via semidefinite programming. Our main result is that the polynomials which should be optimized can be non-negative but not SOS, hence the resulting convex relaxation is not tight; specifically, we present an example of real-life configurations for which the convex relaxation in the Lasserre Hierarchy fails, in both the second and third levels. In addition to the theoretical contribution, the conclusion for practitioners is that this commonly-used approach can fail; our experiments suggest that using higher levels of the Lasserr...
The Perspective Relaxation (PR) is a general approach for constructing tight approximations to Mixed...
Despite their enormous success in solving hard combi-natorial problems, convex relaxation approaches...
Abstract. We introduce a framework for computing statistically optimal estimates of geometric recons...
In this paper, we formulate a generic non-minimal solver using the existing tools of Polynomials Opt...
Why is it that semidefinite relaxations have been so successful in numerous applications in computer...
The Perspective Relaxation (PR) is a general approach for constructing tight approximations to Mixed...
The Perspective Reformulation (PR) of a Mixed-Integer NonLinear Program with semi-continuous variabl...
The perspective reformulation (PR) of a Mixed-Integer NonLinear Program with semi-continuous variabl...
We propose a noniterative solution for the Perspective-n-Point (PnP) problem, which can robustly ret...
Rigid structure-from-motion (RSfM) and non-rigid structure-from-motion (NRSfM) have long been treate...
In this paper, a statistically optimal solution to the Perspective-n-Point (PnP) problem is presente...
Abstract: The perspective-n-point (PnP) problem is of fundamental importance in computer vision. A ...
Rigid structure-from-motion (RSfM) and non-rigid structure-from-motion (NRSfM) have long been treate...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
We introduce a recently published convex relaxation approach for the quadratic assignment problem to...
The Perspective Relaxation (PR) is a general approach for constructing tight approximations to Mixed...
Despite their enormous success in solving hard combi-natorial problems, convex relaxation approaches...
Abstract. We introduce a framework for computing statistically optimal estimates of geometric recons...
In this paper, we formulate a generic non-minimal solver using the existing tools of Polynomials Opt...
Why is it that semidefinite relaxations have been so successful in numerous applications in computer...
The Perspective Relaxation (PR) is a general approach for constructing tight approximations to Mixed...
The Perspective Reformulation (PR) of a Mixed-Integer NonLinear Program with semi-continuous variabl...
The perspective reformulation (PR) of a Mixed-Integer NonLinear Program with semi-continuous variabl...
We propose a noniterative solution for the Perspective-n-Point (PnP) problem, which can robustly ret...
Rigid structure-from-motion (RSfM) and non-rigid structure-from-motion (NRSfM) have long been treate...
In this paper, a statistically optimal solution to the Perspective-n-Point (PnP) problem is presente...
Abstract: The perspective-n-point (PnP) problem is of fundamental importance in computer vision. A ...
Rigid structure-from-motion (RSfM) and non-rigid structure-from-motion (NRSfM) have long been treate...
© 2016 IEEE. Semidefinite Programming (SDP) and Sums-of-Squ-ares (SOS) relaxations have led to certi...
We introduce a recently published convex relaxation approach for the quadratic assignment problem to...
The Perspective Relaxation (PR) is a general approach for constructing tight approximations to Mixed...
Despite their enormous success in solving hard combi-natorial problems, convex relaxation approaches...
Abstract. We introduce a framework for computing statistically optimal estimates of geometric recons...