We introduce the broad subclass of algebraic compressed sensing problems, where structured signals are modeled either explicitly or implicitly via polynomials. This includes, for instance, low-rank matrix and tensor recovery. We employ powerful techniques from algebraic geometry to study well-posedness of sufficiently general compressed sensing problems, including existence, local recoverability, global uniqueness, and local smoothness. Our main results are summarized in thirteen questions and answers in algebraic compressed sensing. Most of our answers concerning the minimum number of required measurements for existence, recoverability, and uniqueness of algebraic compressed sensing problems are optimal and depend only on the dimension of the model.
翻译:我们引入了广义的代数压缩感测问题亚类,其中结构化信号通过多数值制成或以明确或隐含的方式建模,其中包括低位矩阵和高压恢复等,我们采用代数几何学的强力技术,研究足够普遍的压缩感测问题,包括存在、可在当地恢复、全球独特性和当地平滑性,我们的主要结果归纳在13个问题和对代数压缩感测的答案中,我们关于代数压缩感测问题的存在、可恢复性和独特性所需测量的最低数量的答案大多是最佳的,仅取决于模型的层面。