DocumentCode :
72952
Title :
RISE: An Incremental Trust-Region Method for Robust Online Sparse Least-Squares Estimation
Author :
Rosen, David M. ; Kaess, Michael ; Leonard, John J.
Author_Institution :
Comput. Sci. & Artificial Intell. Lab., Massachusetts Inst. of Technol., Cambridge, MA, USA
Volume :
30
Issue :
5
fYear :
2014
fDate :
Oct. 2014
Firstpage :
1091
Lastpage :
1108
Abstract :
Many point estimation problems in robotics, computer vision, and machine learning can be formulated as instances of the general problem of minimizing a sparse nonlinear sum-of-squares objective function. For inference problems of this type, each input datum gives rise to a summand in the objective function, and therefore performing online inference corresponds to solving a sequence of sparse nonlinear least-squares minimization problems in which additional summands are added to the objective function over time. In this paper, we present Robust Incremental least-Squares Estimation (RISE), an incrementalized version of the Powell´s Dog-Leg numerical optimization method suitable for use in online sequential sparse least-squares minimization. As a trust-region method, RISE is naturally robust to objective function nonlinearity and numerical ill-conditioning and is provably globally convergent for a broad class of inferential cost functions (twice-continuously differentiable functions with bounded sublevel sets). Consequently, RISE maintains the speed of current state-of-the-art online sparse least-squares methods while providing superior reliability.
Keywords :
convergence of numerical methods; least squares approximations; minimisation; Dog-Leg numerical optimization method; RISE; bounded sublevel sets; global convergence; incremental trust-region method; inference problems; inferential cost functions; input datum; many point estimation problems; numerical ill-conditioning; online inference; online sequential sparse least-squares minimization; robust incremental least-squares estimation; robust online sparse least-squares estimation; sparse nonlinear least-squares minimization problems; sparse nonlinear sum-of-squares objective function; summands; twice-continuously differentiable functions; Approximation methods; Convergence; Jacobian matrices; Linear programming; Minimization; Robots; Robustness; Computer vision; machine learning; online estimation; simultaneous localization and mapping (SLAM); sparse least-squares minimization;
fLanguage :
English
Journal_Title :
Robotics, IEEE Transactions on
Publisher :
ieee
ISSN :
1552-3098
Type :
jour
DOI :
10.1109/TRO.2014.2321852
Filename :
6845338
Link To Document :
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