Still Image Compression on Parallel Computer Architectures

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Still Image Compression on Parallel Computer Architectures investigates the application of parallel-processing techniques to digital image compression. Digital image compression is used to reduce the number of bits required to store an image in computer memory and/or transmit it over a communication link. Over the past decade advancements in technology have spawned many applications of digital imaging, such as photo videotex, desktop publishing, graphics arts, color facsimile, newspaper wire phototransmission and medical imaging. For many other contemporary applications, such as distributed multimedia systems, rapid transmission of images is necessary. Dollar cost as well as time cost of transmission and storage tend to be directly proportional to the volume of data. Therefore, application of digital image compression techniques becomes necessary to minimize costs.
A number of digital image compression algorithms have been developed and standardized. With the success of these algorithms, research effort is now directed towards improving implementation techniques. The Joint Photographic Experts Group (JPEG) and Motion Photographic Experts Group(MPEG) are international organizations which have developed digital image compression standards. Hardware (VLSI chips) which implement the JPEG image compression algorithm are available. Such hardware is specific to image compression only and cannot be used for other image processing applications. A flexible means of implementing digital image compression algorithms is still required. An obvious method of processing different imaging applications on general purpose hardware platforms is to develop software implementations.
JPEG uses an 8 × 8 block of image samples as the basic element for compression. These blocks are processed sequentially. There is always the possibility of having similar blocks in a given image. If similar blocks in an image are located, then repeatedcompression of these blocks is not necessary. By locating similar blocks in the image, the speed of compression can be increased and the size of the compressed image can be reduced. Based on this concept an enhancement to the JPEG algorithm is proposed, called Bock Comparator Technique (BCT).
Still Image Compression on Parallel Computer Architectures is designed for advanced students and practitioners of computer science. This comprehensive reference provides a foundation for understanding digital image compression techniques and parallel computer architectures.

Klappentext

Still Image Compression on Parallel Computer Architectures investigates the application of parallel-processing techniques to digital image compression. Digital image compression is used to reduce the number of bits required to store an image in computer memory and/or transmit it over a communication link. Over the past decade advancements in technology have spawned many applications of digital imaging, such as photo videotex, desktop publishing, graphics arts, color facsimile, newspaper wire phototransmission and medical imaging. For many other contemporary applications, such as distributed multimedia systems, rapid transmission of images is necessary. Dollar cost as well as time cost of transmission and storage tend to be directly proportional to the volume of data. Therefore, application of digital image compression techniques becomes necessary to minimize costs. A number of digital image compression algorithms have been developed and standardized. With the success of these algorithms, research effort is now directed towards improving implementation techniques. The Joint Photographic Experts Group (JPEG) and Motion Photographic Experts Group(MPEG) are international organizations which have developed digital image compression standards. Hardware (VLSI chips) which implement the JPEG image compression algorithm are available. Such hardware is specific to image compression only and cannot be used for other image processing applications. A flexible means of implementing digital image compression algorithms is still required. An obvious method of processing different imaging applications on general purpose hardware platforms is to develop software implementations. JPEG uses an 8 × 8 block of image samples as the basic element for compression. These blocks are processed sequentially. There is always the possibility of having similar blocks in a given image. If similar blocks in an image are located, then repeatedcompression of these blocks is not necessary. By locating similar blocks in the image, the speed of compression can be increased and the size of the compressed image can be reduced. Based on this concept an enhancement to the JPEG algorithm is proposed, called Bock Comparator Technique (BCT). Still Image Compression on Parallel Computer Architectures is designed for advanced students and practitioners of computer science. This comprehensive reference provides a foundation for understanding digital image compression techniques and parallel computer architectures.


Inhalt
1 Introduction.- 1.1 Introduction.- 1.2 Problem Statement.- 1.3 Literature Review.- 1.4 Research Objectives.- 1.5 Book Outline.- 2 Digital Image Compression Techniques.- 2.1 Introduction.- 2.2 Digital Image Compression Techniques.- 2.3 JPEG Standard.- 2.4 Block Comparator Enhancement to the JPEG Algorithm.- 2.5 Summary.- 3 Parallel Processing Plans for Digital Image Compression Techniques.- 3.1 Introduction.- 3.2 Parallel Computer Architectures.- 3.3 Parallel Processing Plans for Digital Image Compression Techniques.- 3.4 Implementation of Plans on Parallel Computer Architectures.- 3.5 Performance Measures.- 3.6 Summary.- 4 Implementation of Jpeg Algorithm on Parallel Computers.- 4.1 Introduction.- 4.2 Implementation of the JPEG Algorithm on the Mercury System.- 4.3 Implementation of the JPEG Algorithm on the Shiva System.- 4.4 Implementation of the JPEG Algorithm on the Param System.- 4.5 Performance Comparison of Parallel Computers.- 4.6 Summary.- 5 Simulation of Digital Image Compression Techniques.- 5.1 Introduction.- 5.2 Simulation Procedure.- 5.3 Simulation Results of Digital Image Compression Techniques.- 5.4 Performance Comparison of Parallel Architectures.- 5.5 Summary.- 6 Conclusions.- 6.1 Introduction.- 6.2 Block Comparator Technique Enhancement to the JPEG Algorithm.- 6.3 Implementation of the Digital Image Compression Algorithm.- 6.4 Simulation of Digital Image Compression.- 6.5 Directions for Future Research.- References.- Appendix A.

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Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09781461372547
    • Sprache Englisch
    • Genre Anwendungs-Software
    • Größe H235mm x B155mm x T13mm
    • Jahr 2012
    • EAN 9781461372547
    • Format Kartonierter Einband
    • ISBN 1461372542
    • Veröffentlichung 11.10.2012
    • Titel Still Image Compression on Parallel Computer Architectures
    • Autor Savitri Bevinakoppa
    • Untertitel The Springer International Series in Engineering and Computer Science 475
    • Gewicht 359g
    • Herausgeber Springer
    • Anzahl Seiten 232
    • Lesemotiv Verstehen

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