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Linde–Buzo–Gray algorithm

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The Linde-Buzo-Gray algorithm is a vector quantization algorithm to derive a good codebook. It is similar to the K-means method in data clustering.

The algorithm

At each iteration, each vector is split into two new vectors.

  • A initial state: centroid of the training sequence;
  • B initial estimation #1: code book of size 2;
  • C final estimation after LGA: Optimal code book with 4 vectors;
  • D initial estimation #2: code book of size 4;
  • E final estimation after LGA: Optimal code book with 4 vectors;

See also