姿态估计神经网络的敏感性:旋转参数化、Lipschitz常数和可证明界

Trevor Avant, K. Morgansen
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引用次数: 0

摘要

在本文中,我们探讨了确定姿态估计神经网络的灵敏度边界的任务。这项任务特别具有挑战性,因为它需要表征3D旋转的灵敏度。我们开发了一种灵敏度测量,它描述了网络输出相对于其输入的欧几里得变化的最大旋转变化。我们证明了这个测度是一种李普希茨常数,它是由一个网络的欧几里得李普希茨常数和一个旋转参数化的固有性质的乘积所限定的,我们称之为“距离比常数”。我们推导了几种旋转参数化的距离比常数,然后讨论了为什么大多数这些参数化的结构使得难以构建具有可证明灵敏度界限的姿态估计网络。然而,我们表明,对于使用无约束指数坐标参数化旋转的网络,可以计算灵敏度边界。然后我们构造和训练这样的网络,并计算它的灵敏度界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the sensitivity of pose estimation neural networks: rotation parameterizations, Lipschitz constants, and provable bounds
In this paper, we approach the task of determining sensitivity bounds for pose estimation neural networks. This task is particularly challenging as it requires characterizing the sensitivity of 3D rotations. We develop a sensitivity measure that describes the maximum rotational change in a network's output with respect to a Euclidean change in its input. We show that this measure is a type of Lipschitz constant, and that it is bounded by the product of a network's Euclidean Lipschitz constant and an intrinsic property of a rotation parameterization which we call the"distance ratio constant". We derive the distance ratio constant for several rotation parameterizations, and then discuss why the structure of most of these parameterizations makes it difficult to construct a pose estimation network with provable sensitivity bounds. However, we show that sensitivity bounds can be computed for networks which parameterize rotation using unconstrained exponential coordinates. We then construct and train such a network and compute sensitivity bounds for it.
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