全局监督下降法

Xuehan Xiong, F. D. L. Torre
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引用次数: 209

摘要

数学优化在解决计算机视觉中的许多问题(例如,相机校准,图像对齐,运动结构)中起着基础作用。对于一般光滑函数的非线性优化,二阶下降法是最鲁棒、最快速、最可靠的方法。然而,在计算机视觉的背景下,二阶下降方法有两个主要的缺点:1)函数可能不是解析可微的,数值近似是不切实际的,2)Hessian可能很大,不是正定的。为了解决这些问题,最近提出了监督下降法(Supervised Descent Method, SDM),一种以监督的方式学习“加权平均梯度”的方法。然而,SDM是一种局部算法,可能会对冲突的梯度方向进行平均。本文提出了全局SDM (Global SDM, GSDM),它是SDM的扩展,将搜索空间划分为梯度方向相似的区域。GSDM为计算机视觉问题中非线性最小二乘函数的最小化提供了一种更好、更有效的策略。我们举例说明了GSDM在两个问题上的有效性:非刚性图像对准和外部摄像机标定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Global supervised descent method
Mathematical optimization plays a fundamental role in solving many problems in computer vision (e.g., camera calibration, image alignment, structure from motion). It is generally accepted that second order descent methods are the most robust, fast, and reliable approaches for nonlinear optimization of a general smooth function. However, in the context of computer vision, second order descent methods have two main drawbacks: 1) the function might not be analytically differentiable and numerical approximations are impractical, and 2) the Hessian may be large and not positive definite. Recently, Supervised Descent Method (SDM), a method that learns the “weighted averaged gradients” in a supervised manner has been proposed to solve these issues. However, SDM is a local algorithm and it is likely to average conflicting gradient directions. This paper proposes Global SDM (GSDM), an extension of SDM that divides the search space into regions of similar gradient directions. GSDM provides a better and more efficient strategy to minimize non-linear least squares functions in computer vision problems. We illustrate the effectiveness of GSDM in two problems: non-rigid image alignment and extrinsic camera calibration.
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