We introduce the concept of samplets by transferring the construction of Tausch-White wavelets to scattered data. This way, we obtain a multiresolution analysis tailored to discrete data which directly enables data compression, feature detection and adaptivity. The cost for constructing the samplet basis and for the fast samplet transform, respectively, is $O(N)$, where $N$ is the number of data points. Samplets with vanishing moments can be used to compress kernel matrices, arising, for instance, kernel based learning and scattered data approximation. The result are sparse matrices with only $O(N \log N )$ remaining entries. We provide estimates for the compression error and present an algorithm that computes the compressed kernel matrix...
If an image can be represented in a sparse domain, it has been shown in previous work [1,2,3], that ...
This book presents the state of the art in sparse and multiscale image and signal processing, coveri...
International audienceThis book presents the state of the art in sparse and multiscale image and sig...
We propose a sparse arithmetic for kernel matrices, enabling efficient scattered data analysis. The ...
We present improved sampling complexity bounds for stable and robust sparse recovery in compressed s...
This note complements the paper The quest for optimal sampling: Computationally efficient, structure...
Compressive sensing accurately reconstructs a signal that is sparse in some basis from measurements,...
AbstractWe introduce a class of multiscale decompositions for scattered discrete data, motivated by ...
This thesis focuses on developing efficient algorithmic tools for processing large datasets. In many...
Traditionally the compressive sensing theory have been focusing on the three principles of sparsity,...
This paper examines some one-dimensional lossy image compression schemes. To perform one-dimensional...
We show that the use of wavelet bases for solving the momentum-space scattering integral equation le...
Compressed sensing is a recently developed technique that exploits the sparsity of naturally occurri...
Popular transforms, like the discrete cosine transform or the wavelet transform, owe their success t...
Abstract Compressive sensing theory asserts that, under certain conditions, a high dimensional but ...
If an image can be represented in a sparse domain, it has been shown in previous work [1,2,3], that ...
This book presents the state of the art in sparse and multiscale image and signal processing, coveri...
International audienceThis book presents the state of the art in sparse and multiscale image and sig...
We propose a sparse arithmetic for kernel matrices, enabling efficient scattered data analysis. The ...
We present improved sampling complexity bounds for stable and robust sparse recovery in compressed s...
This note complements the paper The quest for optimal sampling: Computationally efficient, structure...
Compressive sensing accurately reconstructs a signal that is sparse in some basis from measurements,...
AbstractWe introduce a class of multiscale decompositions for scattered discrete data, motivated by ...
This thesis focuses on developing efficient algorithmic tools for processing large datasets. In many...
Traditionally the compressive sensing theory have been focusing on the three principles of sparsity,...
This paper examines some one-dimensional lossy image compression schemes. To perform one-dimensional...
We show that the use of wavelet bases for solving the momentum-space scattering integral equation le...
Compressed sensing is a recently developed technique that exploits the sparsity of naturally occurri...
Popular transforms, like the discrete cosine transform or the wavelet transform, owe their success t...
Abstract Compressive sensing theory asserts that, under certain conditions, a high dimensional but ...
If an image can be represented in a sparse domain, it has been shown in previous work [1,2,3], that ...
This book presents the state of the art in sparse and multiscale image and signal processing, coveri...
International audienceThis book presents the state of the art in sparse and multiscale image and sig...