Package smile.vq
package smile.vq
Vector quantization is a lossy compression technique used in speech
and image coding. In vector quantization, a vector is selected from
a finite list of possible vectors to represent an input vector of
samples. Each input vector can be viewed as a point in an n-dimensional
space. The vector quantizer is defined by a partition of this space
into a set of non-overlapping regions. The vector is encoded by
the nearest reference vector (known as codevector) in the codebook.
-
ClassDescriptionBalanced Iterative Reducing and Clustering using Hierarchies.Growing Neural Gas.The neighborhood function for 2-dimensional lattice topology (e.g.Neural Gas soft competitive learning algorithm.NeuralMap is an efficient competitive learning algorithm inspired by growing neural gas and BIRCH.Self-Organizing Map.Vector quantizer with competitive learning.