Augmented Lagrangian-based approach for dense three-dimensional structure and motion estimation from binocular image sequences This publication appears in: IET Computer Vision Authors: G. De Cubber and H. Sahli Volume: 8 Issue: 2 Pages: 98-109 Publication Year: 2013
Abstract: In this study, the authors propose a framework for stereomotion integration for dense depth estimation. They formulate the stereomotion depth reconstruction problem into a constrained minimisation one. A sequential unconstrained minimisation technique, namely, the augmented Lagrange multiplier (ALM) method has been implemented to address the resulting constrained optimisation problem. ALM has been chosen because of its relative insensitivity to whether the initial design points for a pseudo-objective function are feasible or not. The development of the method and results from solving the stereomotion integration problem are presented. Although the authors work is not the only one adopting the ALMs framework in the computer vision context, to thier knowledge the presented algorithm is the first to use this mathematical framework in a context of stereomotion integration. This study describes how the stereomotion integration problem was cast in a mathematical context and solved using the presented ALM method. Results on benchmark and real visual input data show the validity of the approach.
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