We give an algorithm for ℓ[subscript 2]/ℓ[subscript 2] sparse recovery from Fourier measurements using O(k log N) samples, matching the lower bound of Do Ba-Indyk-Price-Woodruff'10 for non-adaptive algorithms up to constant factors for any k ≤ N [superscript 1-δ]. The algorithm runs in Õ(N) time. Our algorithm extends to higher dimensions, leading to sample complexity of Õd(k log N), which is optimal up to constant factors for any d = O(1). These are the first sample optimal algorithms for these problems. A preliminary experimental evaluation indicates that our algorithm has empirical sampling complexity comparable to that of other recovery methods known in the literature, while providing strong provable guarantees on the recovery quality...
The problem of signal recovery from the autocorrelation, or equivalently, the magnitudes of the Four...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
AbstractWe present a sublinear randomized algorithm to compute a sparse Fourier transform for nonequ...
We give an algorithm for `2/`2 sparse recovery from Fourier measurements using O(k logN) sam-ples, m...
We consider the problem of computing the k-sparse approximation to the discrete Fourier transform of...
We consider the problem of computing a k-sparse approximation to the discrete Fourier transform of a...
We consider the problem of computing a k-sparse approximation to the discrete Fourier trans-form of ...
This thesis focuses on developing efficient algorithmic tools for processing large datasets. In many...
ABSTRACT We give an algorithm for finding a Fourier representation R of B terms for a given discrete...
A. C. Gilbert S. Guha P. Indyk S. Muthukrishnan M. Strauss ABSTRACT We give an algorit...
We consider the problem of reconstructing a sparse signal x^0\in{\bb R}^n from a limited number of ...
AbstractThis paper explores numerically the efficiency of ℓ1 minimization for the recovery of sparse...
Given an n-length input signal x, it is well known that its Discrete Fourier Transform (DFT), X, can...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
The problem of signal recovery from the autocorrelation, or equivalently, the magnitudes of the Four...
The problem of signal recovery from the autocorrelation, or equivalently, the magnitudes of the Four...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
AbstractWe present a sublinear randomized algorithm to compute a sparse Fourier transform for nonequ...
We give an algorithm for `2/`2 sparse recovery from Fourier measurements using O(k logN) sam-ples, m...
We consider the problem of computing the k-sparse approximation to the discrete Fourier transform of...
We consider the problem of computing a k-sparse approximation to the discrete Fourier transform of a...
We consider the problem of computing a k-sparse approximation to the discrete Fourier trans-form of ...
This thesis focuses on developing efficient algorithmic tools for processing large datasets. In many...
ABSTRACT We give an algorithm for finding a Fourier representation R of B terms for a given discrete...
A. C. Gilbert S. Guha P. Indyk S. Muthukrishnan M. Strauss ABSTRACT We give an algorit...
We consider the problem of reconstructing a sparse signal x^0\in{\bb R}^n from a limited number of ...
AbstractThis paper explores numerically the efficiency of ℓ1 minimization for the recovery of sparse...
Given an n-length input signal x, it is well known that its Discrete Fourier Transform (DFT), X, can...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
The problem of signal recovery from the autocorrelation, or equivalently, the magnitudes of the Four...
The problem of signal recovery from the autocorrelation, or equivalently, the magnitudes of the Four...
In compressive sensing framework it has been shown that a sparse signal can be successfully recovere...
AbstractWe present a sublinear randomized algorithm to compute a sparse Fourier transform for nonequ...