Partially deterministic sampling for compressed sensing with denoising guarantees

arXiv stat.ML / 4/7/2026

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Key Points

  • 論文は、圧縮センシングにおいてサンプリングベクトルをユニタリ行列の行から選ぶ設定を扱い、従来の「完全ランダム」選択だけでなく「重要な行は決定論的に採用したい」という実務上の要請に焦点を当てています。
  • Bernoulliセレクタを用いて、どの行を決定論的にサンプルすべきかを理論的に最適化し、ランダム選択と決定論的選択を自然に組み合わせるサンプリング方式を導出しています。
  • 理論解析と数値実験により、この方式が(復元あり/なしの)従来のサンプリング手法より画像の圧縮センシング性能を改善すると報告しています。
  • 改善されたサンプル複雑度(sample complexity)の境界と、本設定に対する新しいdenoising(ノイズ除去)保証を提供しています。

Abstract

We study compressed sensing when the sampling vectors are chosen from the rows of a unitary matrix. In the literature, these sampling vectors are typically chosen randomly; the use of randomness has enabled major empirical and theoretical advances in the field. However, in practice there are often certain crucial sampling vectors, in which case practitioners will depart from the theory and sample such rows deterministically. In this work, we derive an optimized sampling scheme for Bernoulli selectors which naturally combines random and deterministic selection of rows, thus rigorously deciding which rows should be sampled deterministically. This sampling scheme provides measurable improvements in image compressed sensing for both generative and sparse priors when compared to with-replacement and without-replacement sampling schemes, as we show with theoretical results and numerical experiments. Additionally, our theoretical guarantees feature improved sample complexity bounds compared to previous works, and novel denoising guarantees in this setting.