secondary quantization - meaning and definition. What is secondary quantization
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What (who) is secondary quantization - definition

COMPRESSION TECHNIQUE INVOLVED IN IMAGE PROCESSING
Quantization matrix; Quantization matrices; Image quantization; Quantisation matrix; Quantisation matrices

Quantization (music)         
STUDIO-SOFTWARE PROCESS OF TRANSFORMING PERFORMED MUSICAL NOTES
Beat quantization
In digital music processing technology, quantization is the studio-software process of transforming performed musical notes, which may have some imprecision due to expressive performance, to an underlying musical representation that eliminates the imprecision. The process results in notes being set on beats and on exact fractions of beats.
Quantization (image processing)         
Quantization, involved in image processing, is a lossy compression technique achieved by compressing a range of values to a single quantum value. When the number of discrete symbols in a given stream is reduced, the stream becomes more compressible.
secondary colour         
COLOR MADE BY MIXING TWO PRIMARY COLORS
Secondary colour; Secondary colors; Secondary colours; Primary and secondary color; Subtractive secondary colors
¦ noun a colour resulting from the mixing of two primary colours.

Wikipedia

Quantization (image processing)

Quantization, involved in image processing, is a lossy compression technique achieved by compressing a range of values to a single quantum (discrete) value. When the number of discrete symbols in a given stream is reduced, the stream becomes more compressible. For example, reducing the number of colors required to represent a digital image makes it possible to reduce its file size. Specific applications include DCT data quantization in JPEG and DWT data quantization in JPEG 2000.