Unlabeled Sensing with Random Linear Measurements
Jayakrishnan Unnikrishnan, Saeid Haghighatshoar, Martin Vetterli

TL;DR
This paper investigates the problem of recovering a signal from unlabeled linear measurements, demonstrating that with random matrices and sufficient measurements, exact recovery is possible even without knowing the order of observations.
Contribution
It establishes conditions under which exact signal recovery is guaranteed in unlabeled sensing, including the number of measurements needed and the universality of the solution.
Findings
Exact recovery with probability 1 when oversampling ratio ≥ 2
Any 2K measurements suffice for recovery of a K-dimensional signal
Recovery error approaches zero as SNR increases in noisy scenarios
Abstract
We study the problem of solving a linear sensing system when the observations are unlabeled. Specifically we seek a solution to a linear system of equations y = Ax when the order of the observations in the vector y is unknown. Focusing on the setting in which A is a random matrix with i.i.d. entries, we show that if the sensing matrix A admits an oversampling ratio of 2 or higher, then with probability 1 it is possible to recover x exactly without the knowledge of the order of the observations in y. Furthermore, if x is of dimension K, then any 2K entries of y are sufficient to recover x. This result implies the existence of deterministic unlabeled sensing matrices with an oversampling factor of 2 that admit perfect reconstruction. The result is universal in that recovery is guaranteed for all possible choices of x. While the proof is constructive, it uses a combinatorial algorithm…
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