Unlabeled sensing is a linear inverse problem where the measurements are scrambled under an unknown permutation leading to loss of correspondence between the measurements and the rows of the sensing matrix. Motivated by practical tasks such as mobile sensor networks, target tracking and the pose and correspondence estimation between point clouds, we study a special case of this problem restricting the class of permutations to be local and allowing for multiple views. In this setting, namely unlabeled multi-view sensing with local permutation, previous results and algorithms are not directly applicable. In this paper, we propose a computationally efficient algorithm that creatively exploits the machinery of graph alignment and Gromov-Wasserstein alignment and leverages the multiple views to estimate the local permutations. Simulation results on synthetic data sets indicate that the proposed algorithm is scalable and applicable to the challenging regimes of low to moderate SNR.
翻译:无标签遥感是一个线性反向问题,在这种情况下,测量在未知的变异下进行,导致测量与感测矩阵各行之间失去对应性。受移动传感器网络、目标跟踪以及点云之间的表面和对应性估计等实际任务的影响,我们研究了这一问题的一个特例,即将变异类别限制在本地范围,并允许多种观点。在这一背景下,即带本地变异的无标签多视图感测、先前的结果和算法不能直接适用。在本文中,我们提出一种具有计算效率的算法,创造性地利用图形对齐和Gromov-Wasserstein对齐的机器,并利用多种观点来估计本地变异。合成数据集的模拟结果表明,拟议的算法可以伸缩,并适用于低至中度 SNR的富有挑战性制度。