ITLGMLOct 21, 2015

Learning-based Compressive Subsampling

arXiv:1510.06188v376 citations
Originality Highly original
AI Analysis

This addresses the challenge of selecting measurement indices in compressive sensing for applications like medical imaging, offering a principled alternative to random subsampling.

The paper tackles the problem of optimizing subsampling for signal recovery by proposing a learning-based approach to choose a fixed index set from training signals, showing it can be efficiently solved with theoretical guarantees and effectiveness on various datasets.

The problem of recovering a structured signal $\mathbf{x} \in \mathbb{C}^p$ from a set of dimensionality-reduced linear measurements $\mathbf{b} = \mathbf {A}\mathbf {x}$ arises in a variety of applications, such as medical imaging, spectroscopy, Fourier optics, and computerized tomography. Due to computational and storage complexity or physical constraints imposed by the problem, the measurement matrix $\mathbf{A} \in \mathbb{C}^{n \times p}$ is often of the form $\mathbf{A} = \mathbf{P}_Ω\boldsymbolΨ$ for some orthonormal basis matrix $\boldsymbolΨ\in \mathbb{C}^{p \times p}$ and subsampling operator $\mathbf{P}_Ω: \mathbb{C}^{p} \rightarrow \mathbb{C}^{n}$ that selects the rows indexed by $Ω$. This raises the fundamental question of how best to choose the index set $Ω$ in order to optimize the recovery performance. Previous approaches to addressing this question rely on non-uniform \emph{random} subsampling using application-specific knowledge of the structure of $\mathbf{x}$. In this paper, we instead take a principled learning-based approach in which a \emph{fixed} index set is chosen based on a set of training signals $\mathbf{x}_1,\dotsc,\mathbf{x}_m$. We formulate combinatorial optimization problems seeking to maximize the energy captured in these signals in an average-case or worst-case sense, and we show that these can be efficiently solved either exactly or approximately via the identification of modularity and submodularity structures. We provide both deterministic and statistical theoretical guarantees showing how the resulting measurement matrices perform on signals differing from the training signals, and we provide numerical examples showing our approach to be effective on a variety of data sets.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes