000 01821nam a2200265 a 4500
001 ASIN1848822960
003 OSt
005 20200227135644.0
008 150504s2009 xxu eng d
020 _a9788132204466
020 _a9781848822962 (hardcover)
037 _bPak Book
_cPKR 884.03
040 _cAUMC
082 _a004.6
100 1 _aRuiz, Francisco Escolano.
245 1 0 _aInformation theory in computer...................
_cFrancisco Escolano Ruiz, Pablo Suau Pérez, Boyán Ivanov Bonev, Alan L. Yuille
260 _aNew Delhi :
_bSpringer,
_c2009
300 _axvii,355 p. ;
_c(R14,SH 05)
520 _aInformation theory has proved to be effective for solving many computer vision and pattern recognition (CVPR) problems (such as image matching, clustering and segmentation, saliency detection, feature selection, optimal classifier design and many others). Nowadays, researchers are widely bringing information theory elements to the CVPR arena. Among these elements there are measures (entropy, mutual information…), principles (maximum entropy, minimax entropy…) and theories (rate distortion theory, method of types…). This book explores and introduces the latter elements through an incremental complexity approach at the same time where CVPR problems are formulated and the most representative algorithms are presented. Interesting connections between information theory principles when applied to different problems are highlighted, seeking a comprehensive research roadmap. The result is a novel tool both for CVPR and machine learning researchers, and contributes to a cross-fertilization of bot
700 _aPérez, Pa
700 _aBonev, BoyÃ
700 _aYuill
856 _3Amazon.com
_uhttp://www.amazon.com/exec/obidos/ASIN/1848822960/chopa
942 _2ddc
_cBK
999 _c19788
_d19788