Certifiably Optimal Outlier-Robust Geometric Perception: Semidefinite Relaxations and Scalable Global Optimization
Heng Yang, Luca Carlone

TL;DR
This paper introduces a scalable, certifiable framework for robust geometric perception that reformulates outlier-affected estimation problems as polynomial optimization problems and solves them efficiently with a novel SDP relaxation and solver.
Contribution
The paper presents a new sparse SDP relaxation for polynomial optimization in robust geometric perception, along with STRIDE, a scalable solver that guarantees global optimality and outperforms existing methods.
Findings
Sparse SDP relaxation is empirically exact with 60-90% outliers.
STRIDE is up to 100 times faster than existing SDP solvers.
STRIDE can solve large SDPs with hundreds of thousands of constraints to high accuracy.
Abstract
We propose the first general and scalable framework to design certifiable algorithms for robust geometric perception in the presence of outliers. Our first contribution is to show that estimation using common robust costs, such as truncated least squares (TLS), maximum consensus, Geman-McClure, Tukey's biweight, among others, can be reformulated as polynomial optimization problems (POPs). By focusing on the TLS cost, our second contribution is to exploit sparsity in the POP and propose a sparse semidefinite programming (SDP) relaxation that is much smaller than the standard Lasserre's hierarchy while preserving empirical exactness, i.e., the SDP recovers the optimizer of the nonconvex POP with an optimality certificate. Our third contribution is to solve the SDP relaxations at an unprecedented scale and accuracy by presenting STRIDE, a solver that blends global descent on the convex SDP…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Optimization Algorithms Research · Computational Geometry and Mesh Generation
