The multireference alignment problem consists of estimating a signal from multiple noisy shifted observations. Inspired by existing Unique-Games approximation algorithms, we provide a semidefi-nite program (SDP) based relaxation which approximates the maximum likelihood estimator (MLE) for the multireference alignment problem. Although we show that the MLE problem is Unique-Games hard to approximate within any constant, we observe that our poly-time approximation algorithm for the MLE appears to perform quite well in typical instances, outperforming existing methods. In an attempt to explain this behavior we provide stability guarantees for our SDP under a random noise model on the observations. This case is more challenging to analyze than...
We address the alignment of a group of images with simultaneous registration. Therefore, we provide ...
The problem of aligning Erdos-Renyi random graphs is a noisy, average-case version of the graph isom...
We present a new machine learning approach to the inverse parametric sequence alignment problem: giv...
The multireference alignment problem consists of estimating a signal from multiple noisy shifted obs...
This thesis aims to develop an alignment-free method to estimate the underlying signal from a large...
Calculation of dot-matrices is a widespread tool in biological sequence comparison. As a visual aid ...
AbstractCalculation of dot-matrices is a widespread tool in biological sequence comparison. As a vis...
The talk of Tamir Bendory will focus on invariants for the multireference alignment (MRA) and cryo-E...
We consider the problem of aligning multiview scans obtained using a range scanner. The computationa...
peer reviewedThe alignment of a set of objects by means of transformations plays an important role i...
Consider N points in R-d and M local coordinate systems that are related through unknown rigid trans...
The alignment of a set of objects by means of transfor-mations plays an important role in computer v...
Many maximum likelihood estimation problems are known to be intractable in the worst case. A common ...
The problem of aligning Erd\"os-R\'enyi random graphs is a noisy, average-case version of the graph ...
Multimodal image alignment is the process of finding spatial correspondences between images formed b...
We address the alignment of a group of images with simultaneous registration. Therefore, we provide ...
The problem of aligning Erdos-Renyi random graphs is a noisy, average-case version of the graph isom...
We present a new machine learning approach to the inverse parametric sequence alignment problem: giv...
The multireference alignment problem consists of estimating a signal from multiple noisy shifted obs...
This thesis aims to develop an alignment-free method to estimate the underlying signal from a large...
Calculation of dot-matrices is a widespread tool in biological sequence comparison. As a visual aid ...
AbstractCalculation of dot-matrices is a widespread tool in biological sequence comparison. As a vis...
The talk of Tamir Bendory will focus on invariants for the multireference alignment (MRA) and cryo-E...
We consider the problem of aligning multiview scans obtained using a range scanner. The computationa...
peer reviewedThe alignment of a set of objects by means of transformations plays an important role i...
Consider N points in R-d and M local coordinate systems that are related through unknown rigid trans...
The alignment of a set of objects by means of transfor-mations plays an important role in computer v...
Many maximum likelihood estimation problems are known to be intractable in the worst case. A common ...
The problem of aligning Erd\"os-R\'enyi random graphs is a noisy, average-case version of the graph ...
Multimodal image alignment is the process of finding spatial correspondences between images formed b...
We address the alignment of a group of images with simultaneous registration. Therefore, we provide ...
The problem of aligning Erdos-Renyi random graphs is a noisy, average-case version of the graph isom...
We present a new machine learning approach to the inverse parametric sequence alignment problem: giv...