We address the problem of reconstructing a set of points on a line or a loop from their unassigned noisy pairwise distances. When the points lie on a line, the problem is known as the turnpike; when they are on a loop, it is known as the beltway. We approximate the problem by discretizing the domain and representing the $N$ points via an $N$-hot encoding, which is a density supported on the discretized domain. We show how the distance distribution is then simply a collection of quadratic functionals of this density and propose to recover the point locations so that the estimated distance distribution matches the measured distance distribution. This can be cast as a constrained nonconvex optimization problem which we solve using projected gradient descent with a suitable spectral initializer. We derive conditions under which the proposed distance distribution matching approach locally converges to a global optimizer at a linear rate. Compared to the conventional backtracking approach, our method jointly reconstructs all the point locations and is robust to noise in the measurements. We substantiate these claims with state-of-the-art performance across a number of numerical experiments. Our method is the first practical approach to solve the large-scale noisy beltway problem where the points lie on a loop.
翻译:我们解决了在线上重建一组点的问题,或者从未指派的杂乱双向距离中回转。 当点位于线上时, 问题被称为转折; 当它们处于环状时, 问题被称为腰带道。 我们通过将域分解, 并通过一个 $N$热编码代表美元点, 这是在离散域上支持的密度, 以离散方式代表一个 $N$ 的点。 我们显示距离分布是如何简单地收集这种密度的四边函数, 并提议恢复点位置, 以便估计的距离分布与测量的距离分布相匹配。 这个问题可以被描绘成一个有限的非convex优化问题, 我们用一个合适的光谱初始化仪来解决这个问题。 我们的方法是让拟议的距离分布匹配方法以直线速速度与全球优化方法相匹配。 与传统的回溯跟踪方法相比, 我们的方法是联合重建所有点位置的位置, 并且对测量中的噪音非常有力。 我们用一系列数字实验的状态性功能来证实这些主张。 我们的方法是用来解决大规模磁带的第一个实际的循环。