We consider the problem of vector quantization of i.i.d. samples drawn from a density p on R d. It is desirable that the representatives selected by the quantization algorithm have the same distribution p as the original sample points. However, quantization algorithms based on Euclidean distance, such as k-means, do not have this property. We provide a solution to this problem that takes the unweighted k-nearest neighbor graph on the sample as input. In particular, it does not need to have access to the data points themselves. Our solution generates quantization centers that are “evenly spaced”. We exploit this property to downsample geometric graphs and show that our method produces sparse downsampled graphs. Our algorithm is easy to imple...
Upon compressing perceptually relevant signals, conventional quantization generally results in unnat...
In this paper we investigate the problem of codebook generation for Vector Quantizers which optimize...
International audienceIn this paper, following the Compressed Sensing paradigm, we study the problem...
Downsampling produces coarsened, multi-resolution representations of data and it is used, for exampl...
Representing a continuous random variable by a finite number of values is known as quantization. Giv...
Abstract:- We are interested in the vector quantization problem. Many researches focus on finding a ...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
The recent framework of compressive statistical learning proposes to design tractable learning algor...
This paper studies the problem of reconstructing sparse or compressible signals from compressed sens...
The field of quantized compressed sensing investigates how to jointly design a measurement matrix, q...
In this paper we study the problem of reconstructing sparse or compressible signals from compressed ...
Nearest neighbor searching is an important geometric subproblem in vector quantization. Existing stu...
In non-parametric pattern recognition, the probability density function is approximated by means of ...
International audienceIn this paper, we study the problem of recovering sparse or compressible signa...
In this paper we study the problem of recovering sparse or compressible signals from uniformly quant...
Upon compressing perceptually relevant signals, conventional quantization generally results in unnat...
In this paper we investigate the problem of codebook generation for Vector Quantizers which optimize...
International audienceIn this paper, following the Compressed Sensing paradigm, we study the problem...
Downsampling produces coarsened, multi-resolution representations of data and it is used, for exampl...
Representing a continuous random variable by a finite number of values is known as quantization. Giv...
Abstract:- We are interested in the vector quantization problem. Many researches focus on finding a ...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
The recent framework of compressive statistical learning proposes to design tractable learning algor...
This paper studies the problem of reconstructing sparse or compressible signals from compressed sens...
The field of quantized compressed sensing investigates how to jointly design a measurement matrix, q...
In this paper we study the problem of reconstructing sparse or compressible signals from compressed ...
Nearest neighbor searching is an important geometric subproblem in vector quantization. Existing stu...
In non-parametric pattern recognition, the probability density function is approximated by means of ...
International audienceIn this paper, we study the problem of recovering sparse or compressible signa...
In this paper we study the problem of recovering sparse or compressible signals from uniformly quant...
Upon compressing perceptually relevant signals, conventional quantization generally results in unnat...
In this paper we investigate the problem of codebook generation for Vector Quantizers which optimize...
International audienceIn this paper, following the Compressed Sensing paradigm, we study the problem...