Homomorphic sensing is a recent algebraic-geometric framework that studies the unique recovery of points in a linear subspace from their images under a given collection of linear maps. It has been successful in interpreting such a recovery in the case of permutations composed by coordinate projections, an important instance in applications known as unlabeled sensing, which models data that are out of order and have missing values. In this paper, we provide tighter and simpler conditions that guarantee the unique recovery for the single-subspace case, extend the result to the case of a subspace arrangement, and show that the unique recovery in a single subspace is locally stable under noise. We specialize our results to several examples of homomorphic sensing such as real phase retrieval and unlabeled sensing. In so doing, in a unified way, we obtain conditions that guarantee the unique recovery for those examples, typically known via diverse techniques in the literature, as well as novel conditions for sparse and unsigned versions of unlabeled sensing. Similarly, our noise result also implies that the unique recovery in unlabeled sensing is locally stable.
翻译:基因感测是一个最近的代数-测地框架,它研究在某一系列线性地图下从一个线性子空间图像中从一个线性子空间中独特回收点的独特情况。它成功地解释了由协调预测构成的线性子空间中的点数的这种恢复情况,协调预测是被称为无标签感测的重要应用实例,其模型数据不符合秩序,缺少了数值。在本文中,我们提供了更严格和更简单的条件,以保证单子空间案例的独特恢复,将结果扩大到子空间安排,并表明单个子空间中的独特恢复在噪音下是当地稳定的。我们把结果专门用于一些同质感感学的例子,例如真实的相级检索和无标签感测。这样,我们以统一的方式获得一些条件,保证这些例子的独特恢复,通常通过文献中的多种技术,以及稀有和无标签感测的版本的新条件。同样,我们的噪声结果还表明,无标签感测的独特恢复是当地稳定的。