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Optimization Models in Steganography Using Metaheuristics - Anand J. Kulkarni,Dipti Kapoor Sarmah,Ajith Abraham

English
2020-02-26
€135.50 €169.38

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This book explores the use of a socio-inspired optimization algorithm (the Cohort Intelligence algorithm), along with Cognitive Computing and a Multi-Random Start Local Search optimization algorithm. One of the most important types of media used for steganography is the JPEG image. Considering four important aspects of steganography techniques ¿ picture quality, high data-hiding capacity, secret text securi ... Full description

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Description

This book explores the use of a socio-inspired optimization algorithm (the Cohort Intelligence algorithm), along with Cognitive Computing and a Multi-Random Start Local Search optimization algorithm. One of the most important types of media used for steganography is the JPEG image. Considering four important aspects of steganography techniques ¿ picture quality, high data-hiding capacity, secret text security and computational time ¿ the book provides extensive information on four novel image-based steganography approaches that employ JPEG compression. Academics, scientists and engineers engaged in research, development and application of steganography techniques, optimization and data analytics will find the book¿s comprehensive coverage an invaluable resource.

More Information

Author Anand J. Kulkarni, Dipti Kapoor Sarmah, Ajith Abraham
Publisher Springer Nature Switzerland
Series Intelligent Systems Reference Library
Release year 2020
Cover type Hardcover
EAN 9783030420437
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€135.50 €169.38