annealed self-organizing map
An Annealed Self-Organizing Map for Source Channel Coding
We derive and analyse robust optimization schemes for noisy vector quantization on the basis of deterministic annealing. Starting from a cost function for central clustering that incorporates distortions from channel noise we develop a soft topographic vector quantization al(cid:173) gorithm (STVQ) which is based on the maximum entropy principle and which performs a maximum-likelihood estimate in an expectation(cid:173) maximization (EM) fashion. Annealing in the temperature parameter f3 leads to phase transitions in the existing code vector representation dur(cid:173) ing the cooling process for which we calculate critical temperatures and modes as a function of eigenvectors and eigenvalues of the covariance matrix of the data and the transition matrix of the channel noise. A whole family of vector quantization algorithms is derived from STVQ, among them a deterministic annealing scheme for Kohonen's self-organizing map (SOM). This algorithm, which we call SSOM, is then applied to vector quantization of image data to be sent via a noisy binary symmetric channel.
An Annealed Self-Organizing Map for Source Channel Coding
Burger, Matthias, Graepel, Thore, Obermayer, Klaus
It is especially suited for speech and image data which in many applieations have to be transmitted under low bandwidth/high noise level conditions. Following the idea of (Farvardin, 1990) and (Luttrell, 1989) of jointly optimizing the codebook and the data representation w.r.t. to a given channel noise we apply a deterministic annealing scheme (Rose, 1990; Buhmann, 1997) to the problem and develop a An Annealed Self-Organizing Map for Source Channel Coding 431 soft topographic vector quantization algorithm (STVQ) (cf.
An Annealed Self-Organizing Map for Source Channel Coding
Burger, Matthias, Graepel, Thore, Obermayer, Klaus
It is especially suited for speech and image data which in many applieations have to be transmitted under low bandwidth/high noise level conditions. Following the idea of (Farvardin, 1990) and (Luttrell, 1989) of jointly optimizing the codebook and the data representation w.r.t. to a given channel noise we apply a deterministic annealing scheme (Rose, 1990; Buhmann, 1997) to the problem and develop a An Annealed Self-Organizing Map for Source Channel Coding 431 soft topographic vector quantization algorithm (STVQ) (cf.
An Annealed Self-Organizing Map for Source Channel Coding
Burger, Matthias, Graepel, Thore, Obermayer, Klaus
It is especially suited for speech and image data which in many applieations have to be transmitted under low bandwidth/high noise level conditions. Followingthe idea of (Farvardin, 1990) and (Luttrell, 1989) of jointly optimizing the codebook and the data representation w.r.t. to a given channel noise we apply a deterministic annealingscheme (Rose, 1990; Buhmann, 1997) to the problem and develop a An Annealed Self-Organizing Map for Source Channel Coding 431 soft topographic vector quantization algorithm (STVQ) (cf.