The Transform and Data Compression Handbook The Transform and Data Compression Handbook
    • USD 279.99

Descripción editorial

Data compression is one of the main contributing factors in the explosive growth in information technology. Without it, a number of consumer and commercial products, such as DVD, videophone, digital camera, MP3, video-streaming and wireless PCS, would have been virtually impossible. Transforming the data to a frequency or other domain enables even more efficient compression. By illustrating this intimate link, The Transform and Data Compression Handbook serves as a much-needed handbook for a wide range of researchers and engineers.

The authors describe various discrete transforms and their applications in different disciplines. They cover techniques, such as adaptive quantization and entropy coding, that result in significant reduction in bit rates when applied to the transform coefficients. With clear and concise presentations of the ideas and concepts, as well as detailed descriptions of the algorithms, the authors provide important insight into the applications and their limitations. Data compression is an essential step towards the efficient storage and transmission of information. The Transform and Data Compression Handbook provides a wealth of information regarding different discrete transforms and demonstrates their power and practicality in data compression.

GÉNERO
Informática e Internet
PUBLICADO
2018
3 de octubre
IDIOMA
EN
Inglés
EXTENSIÓN
408
Páginas
EDITORIAL
CRC Press
VENDEDOR
Taylor & Francis Group
TAMAÑO
22.9
MB
Nonlinear Signal and Image Processing Nonlinear Signal and Image Processing
2003
Signal Processing Noise Signal Processing Noise
2018
Signal and Image Processing in Navigational Systems Signal and Image Processing in Navigational Systems
2018
Noise Reduction in Speech Applications Noise Reduction in Speech Applications
2018
Chaotic Signals in Digital Communications Chaotic Signals in Digital Communications
2018
Applications in Time-Frequency Signal Processing Applications in Time-Frequency Signal Processing
2018