4.6 Article

Accelerated Optimization in the PDE Framework Formulations for the Active Contour Case

Journal

SIAM JOURNAL ON IMAGING SCIENCES
Volume 13, Issue 4, Pages 2029-2062

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/19M1304210

Keywords

partial differential equations; acceleration; Nesterov; mass transport optimization; gradient descent; variational; manifolds

Funding

  1. Army Research Laboratory [W911NF-18-1-0281]
  2. NIH [R01-HL-143350]

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Following the seminal work of Nesterov, accelerated optimization methods have been used to powerfully boost the performance of first-order, gradient based parameter estimation in scenarios where second-order optimization strategies are either inapplicable or impractical. Not only does accelerated gradient descent converge considerably faster than traditional gradient descent, but it also performs a more robust local search of the parameter space by initially overshooting and then oscillating back as it settles into a final configuration, thereby selecting only local minimizers with a basis of attraction large enough to contain the initial overshoot. This behavior has made accelerated and stochastic gradient search methods particularly popular within the machine learning community. In their recent PNAS 2016 paper, A Variational Perspective on Accelerated Methods in Optimization, Wibisono, Wilson, and Jordan demonstrate how a broad class of accelerated schemes can be cast in a variational framework formulated around the Bregman divergence, leading to continuum limit ODEs. We show how their formulation may be further extended to infinite dimensional manifolds (starting here with the geometric space of curves and surfaces) by substituting the Bregman divergence with inner products on the tangent space and explicitly introducing a distributed mass model which evolves in conjunction with the object of interest during the optimization process. The coevolving mass model, which is introduced purely for the sake of endowing the optimization with helpful dynamics, also links the resulting class of accelerated PDE based optimization schemes to fluid dynamical formulations of optimal mass transport.

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