Bilinear Parameterization for Non-Separable Singular Value Penalties

Marcus Valtonen Örnhag, J. Iglesias, Carl Olsson
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引用次数: 2

Abstract

Low rank inducing penalties have been proven to successfully uncover fundamental structures considered in computer vision and machine learning; however, such methods generally lead to non-convex optimization problems. Since the resulting objective is non-convex one often resorts to using standard splitting schemes such as Alternating Direction Methods of Multipliers (ADMM), or other subgradient methods, which exhibit slow convergence in the neighbourhood of a local minimum. We propose a method using second order methods, in particular the variable projection method (VarPro), by replacing the nonconvex penalties with a surrogate capable of converting the original objectives to differentiable equivalents. In this way we benefit from faster convergence.The bilinear framework is compatible with a large family of regularizers, and we demonstrate the benefits of our approach on real datasets for rigid and non-rigid structure from motion. The qualitative difference in reconstructions show that many popular non-convex objectives enjoy an advantage in transitioning to the proposed framework.1
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不可分奇异值惩罚的双线性参数化
低秩诱导惩罚已被证明可以成功地揭示计算机视觉和机器学习中考虑的基本结构;然而,这种方法通常会导致非凸优化问题。由于最终目标是非凸的,因此通常采用标准的分割方案,如乘法器的交替方向方法(ADMM)或其他子梯度方法,这些方法在局部最小值附近表现出缓慢的收敛性。我们提出了一种使用二阶方法的方法,特别是变量投影法(VarPro),通过将非凸惩罚替换为能够将原始目标转换为可微当量的代理。通过这种方式,我们可以从更快的收敛中获益。双线性框架与大量正则化器兼容,我们在运动的刚性和非刚性结构的实际数据集上展示了我们的方法的好处。重建中的质量差异表明,许多流行的非凸目标在过渡到所提出的框架时具有优势
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