Outlier-Robust Estimation: Hardness, Minimally Tuned Algorithms, and Applications
Pasquale Antonante, Vasileios Tzoumas, Heng Yang, Luca Carlone

TL;DR
This paper introduces two unifying formulations for outlier-robust estimation, proves their fundamental computational hardness, and develops minimally tuned algorithms that outperform existing methods in robotics perception tasks.
Contribution
It presents the first proofs of inapproximability for outlier-robust estimation and develops minimally tuned algorithms that adaptively separate inliers from outliers without prior noise knowledge.
Findings
Algorithms run in real-time and outperform RANSAC.
Robustness up to 80-90% outliers demonstrated.
Minimally tuned algorithms perform well without noise bounds.
Abstract
Nonlinear estimation in robotics and vision is typically plagued with outliers due to wrong data association, or to incorrect detections from signal processing and machine learning methods. This paper introduces two unifying formulations for outlier-robust estimation, Generalized Maximum Consensus (G-MC) and Generalized Truncated Least Squares (G-TLS), and investigates fundamental limits, practical algorithms, and applications. Our first contribution is a proof that outlier-robust estimation is inapproximable: in the worst case, it is impossible to (even approximately) find the set of outliers, even with slower-than-polynomial-time algorithms (particularly, algorithms running in quasi-polynomial time). As a second contribution, we review and extend two general-purpose algorithms. The first, Adaptive Trimming (ADAPT), is combinatorial, and is suitable for G-MC; the second, Graduated…
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