Deep Loss Convexification for Learning Iterative Models

Ziming Zhang;Yuping Shao;Yiqing Zhang;Fangzhou Lin;Haichong Zhang;Elke Rundensteiner
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Abstract

Iterative methods such as iterative closest point (ICP) for point cloud registration often suffer from bad local optimality (e.g., saddle points), due to the nature of nonconvex optimization. To address this fundamental challenge, in this paper we propose learning to form the loss landscape of a deep iterative method w.r.t. predictions at test time into a convex-like shape locally around each ground truth given data, namely Deep Loss Convexification (DLC), thanks to the overparametrization in neural networks. To this end, we formulate our learning objective based on adversarial training by manipulating the ground-truth predictions, rather than input data. In particular, we propose using star-convexity, a family of structured nonconvex functions that are unimodal on all lines that pass through a global minimizer, as our geometric constraint for reshaping loss landscapes, leading to (1) extra novel hinge losses appended to the original loss and (2) near-optimal predictions. We demonstrate the state-of-the-art performance using DLC with existing network architectures for the tasks of training recurrent neural networks (RNNs), 3D point cloud registration, and multimodel image alignment.
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学习迭代模型的深度损失凸化
点云配准的迭代方法,如迭代最近点(ICP),由于非凸优化的性质,往往存在较差的局部最优性(如鞍点)。为了解决这一基本挑战,在本文中,我们提出学习在测试时将深度迭代方法w.r.t.预测的损失景观在给定数据的每个基础真值附近局部形成凸形,即深度损失凸化(DLC),这要归功于神经网络中的过参数化。为此,我们通过操纵基本事实预测而不是输入数据来制定基于对抗性训练的学习目标。特别是,我们建议使用星凸性,这是一组结构化的非凸函数,它们在通过全局最小化器的所有线上都是单峰的,作为我们重塑损失景观的几何约束,导致(1)附加在原始损失上的额外新颖铰链损失和(2)接近最优的预测。我们将DLC与现有网络架构一起用于训练循环神经网络(rnn)、3D点云配准和多模型图像对齐等任务,展示了最先进的性能。
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