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Just Least Squares: Binary Compressive Sampling with Low Generative Intrinsic Dimension
[article]
2021
In this paper, we consider recovering $n$ dimensional signals from $m$ binary measurements corrupted by noises and sign flips under the assumption that the target signals have low generative intrinsic dimension, i.e., the target signals can be approximately generated via an $L$-Lipschitz generator $G: \mathbb{R}^k\rightarrow\mathbb{R}^{n}, k\ll n$. Although the binary measurements model is highly nonlinear, we propose a least square decoder and prove that, up to a constant $c$, with high
doi:10.48550/arxiv.2111.14486
fatcat:bet2lk7iejguhk27gb5ot2v4pm