scholarly journals Tightness of the maximum likelihood semidefinite relaxation for angular synchronization

2016 ◽  
Vol 163 (1-2) ◽  
pp. 145-167 ◽  
Author(s):  
Afonso S. Bandeira ◽  
Nicolas Boumal ◽  
Amit Singer
2018 ◽  
Vol 38 (2-3) ◽  
pp. 95-125 ◽  
Author(s):  
David M Rosen ◽  
Luca Carlone ◽  
Afonso S Bandeira ◽  
John J Leonard

Many important geometric estimation problems naturally take the form of synchronization over the special Euclidean group: estimate the values of a set of unknown group elements [Formula: see text] given noisy measurements of a subset of their pairwise relative transforms [Formula: see text]. Examples of this class include the foundational problems of pose-graph simultaneous localization and mapping (SLAM) (in robotics), camera motion estimation (in computer vision), and sensor network localization (in distributed sensing), among others. This inference problem is typically formulated as a non-convex maximum-likelihood estimation that is computationally hard to solve in general. Nevertheless, in this paper we present an algorithm that is able to efficiently recover certifiably globally optimal solutions of the special Euclidean synchronization problem in a non-adversarial noise regime. The crux of our approach is the development of a semidefinite relaxation of the maximum-likelihood estimation (MLE) whose minimizer provides an exact maximum-likelihood estimate so long as the magnitude of the noise corrupting the available measurements falls below a certain critical threshold; furthermore, whenever exactness obtains, it is possible to verify this fact a posteriori, thereby certifying the optimality of the recovered estimate. We develop a specialized optimization scheme for solving large-scale instances of this semidefinite relaxation by exploiting its low-rank, geometric, and graph-theoretic structure to reduce it to an equivalent optimization problem defined on a low-dimensional Riemannian manifold, and then design a Riemannian truncated-Newton trust-region method to solve this reduction efficiently. Finally, we combine this fast optimization approach with a simple rounding procedure to produce our algorithm, SE-Sync. Experimental evaluation on a variety of simulated and real-world pose-graph SLAM datasets shows that SE-Sync is capable of recovering certifiably globally optimal solutions when the available measurements are corrupted by noise up to an order of magnitude greater than that typically encountered in robotics and computer vision applications, and does so significantly faster than the Gauss–Newton-based approach that forms the basis of current state-of-the-art techniques.


Electronics ◽  
2020 ◽  
Vol 9 (1) ◽  
pp. 128
Author(s):  
Xin Wang ◽  
Ying Ding ◽  
Le Yang

Wireless location is a supporting technology in many application scenarios of wireless communication systems. Recently, an increasing number of studies have been conducted on range-based elliptical location in a variety of backgrounds. Specifically, the design and implementation of position estimators are of great significance. The difficulties arising from implementing a maximum likelihood estimator for elliptical location come from the nonconvexity of the negative log-likelihood functions. The need for computational efficiency further enhances the difficulties. Traditional algorithms suffer from the problems of high computational cost and low initialization justifiability. On the other hand, existing closed-form solutions are sensitive to the measurement noise levels. We recognize that the root of these drawbacks lies in an oversimplified linear approximation of the nonconvex model, and accordingly design a maximum likelihood estimator through semidefinite relaxation for elliptical location. We relax the elliptical location problems to semidefinite programs, which can be solved efficiently with interior-point methods. Additionally, we theoretically analyze the complexity of the proposed algorithm. Finally, we design and carry out a series of simulation experiments, showing that the proposed algorithm outperforms several widely used closed-form solutions at a wide range of noise levels. Extensive results under extreme noise conditions verify the deployability of the algorithm.


2018 ◽  
Author(s):  
Michael D. Ward ◽  
John S. Ahlquist

Diagnostica ◽  
2017 ◽  
Vol 63 (3) ◽  
pp. 179-192 ◽  
Author(s):  
Helen Hertzsch
Keyword(s):  

Zusammenfassung. Gegenstand der vorliegenden Studien ist die Konstruktion und Validierung eines deutschsprachigen Inventars zur Erfassung des Konstrukts Kommunikationskompetenz von Schulleitungen (KKI-SL). Kommunikationskompetenz wird als dreidimensionales Konstrukt (Wissen, Fähigkeiten, Motivation) konzeptualisiert und in ein theoretisches Rahmenmodell eingebettet. Fünf Studien wurden mit deutschen Lehrkräften aller Schularten durchgeführt: Selektion und Kategorisierung der Items via Experten-Rating sowie Exploration der Dimensionalität (N = 169), Kreuzvalidierung der gefundenen Faktorenstruktur (N = 1 354), Test-Retest-Reliabilität (N = 126), konvergente und diskriminante Validität (N = 331) und Kriterienrelevanz (N = 1 023). Itemanalysen und Maximum Likelihood-Faktorenanalysen führten zu einer 3-Faktoren-Lösung (Alterzentrismus, Kommunikationswissen und -bereitschaft, Selbstregulationsfähigkeit) mit guten internen Konsistenzen. Konfirmatorische Faktorenanalysen bestätigten die Struktur mit 14 Items. Die psychometrischen Kennwerte des Inventars waren durchweg gut. Beziehungen zu korrespondierenden Konstrukten belegen die konvergente und divergente Validität des Instruments. Als weiterer Validitätshinweis konnten Zusammenhänge mit relevanten Ergebniskriterien (z. B. Arbeitszufriedenheit) nachgewiesen werden.


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