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GENERALIZED NEWTON METHODS FOR ENERGY FORMULATIONS IN IMAGE PROCESSING

机译:图像处理中能量配方的广义牛顿方法

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摘要

Many problems in image processing are solved via the minimization of a cost functional. The most widely used optimization technique is the gradient descent, often used due to its simplicity and applicability where other optimization techniques, e.g., those coming from discrete optimization, can not be used. Yet, gradient descent suffers from a slow convergence, and often to just local minima which highly depends on the condition number of the functional Hessian. Newton-type methods, on the other hand, are known to have a rapid (quadratic) convergence. In its classical form, the Newton method relies on the L~2-type norm to define the descent direction. In this paper, we generalize and reformulate this very important optimization method by introducing a novel Newton method based on general norms. This generalization opens up new possibilities in the extraction of the Newton step, including benefits such as mathematical stability and smoothness constraints. We first present the derivation of the modified Newton step in the calculus of variation framework. Then we demonstrate the method with two common objective functionals: variational image deblurring and geodesic active contours. We show that in addition to the fast convergence, different selections norm yield different and superior results.
机译:通过最小化成本功能来解决图像处理中的许多问题。最广泛使用的优化技术是梯度下降,通常由于其简单和适用性而使用,其中其他优化技术,例如来自离散优化的那些,不能使用。然而,梯度下降遭受缓慢的收敛性,并且经常仅仅是局部最小值,这高度取决于功能性Hessian的条件数量。另一方面,牛顿型方法是众所周知的快速(二次)收敛。在其经典形式中,牛顿方法依赖于L〜2型范围来定义下降方向。在本文中,我们通过基于一般规范引入新的牛顿方法来推广和重构这一非常重要的优化方法。这种概括在提取牛顿步骤中开辟了新的可能性,包括数学稳定性和平滑度约束等益处。我们首先介绍了变异框架微积分中改进的牛顿步骤的推导。然后,我们展示了具有两个共同目标功能的方法:变分图像去纹理和测地活性轮廓。我们表明,除了快速收敛之外,不同的选择范围通常产生不同和卓越的结果。

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