Książka Support Vector Machine Learning Jonathan Robinson

Support Vector Machine Learning

Application to Compression of Digital Images

Język: Angielski
Oprawa: Miękka
Wydawca: VDM Verlag
Dostępność: Dostępna u dostawcy
Wysyłamy za 9-15 dni
291.68
Methods exploring the application of support vector§machine learning (SVM) to still image compressio...

Informacje o książce

Język
Angielski
Oprawa
Książka - Miękka
Data wydania
2008
strony
176
EAN
9783639100006
ISBN
363910000X
Enbook ID
06819008
Wydawca
Waga
245
Wymiary
152 x 229 x 10

Pełny opis

Methods exploring the application of support vector§machine learning (SVM) to still image compression are§detailed in both the spatial and frequency domains.§In particular the sparse properties of SVM learning§are exploited in the compression algorithms. A§classic radial basis function neural network requires§that the topology of the network be defined before§training. An SVM has the property that it will choose§the minimum number of training points to use as§centres of the Gaussian kernel functions. It is this§property that is exploited as the basis for image§compression algorithms presented in this book.§Several novel algorithms are developed applying SVM§learning to both directly model the colour surface§and model transform coefficients after the surface§has been transformed into the frequency domain. It is§demonstrated that compression is more efficient in§frequency space.§In the frequency domain, results are superior to that§of JPEG. For example, the quality of the industry§standard Lena image compressed 63:1 for JPEG is§slightly worse quality than the same image compressed§192:1 with the RKi-1 algorithm detailed in this book. Methods exploring the application of support vector§machine learning (SVM) to still image compression are§detailed in both the spatial and frequency domains.§In particular the sparse properties of SVM learning§are exploited in the compression algorithms. A§classic radial basis function neural network requires§that the topology of the network be defined before§training. An SVM has the property that it will choose§the minimum number of training points to use as§centres of the Gaussian kernel functions. It is this§property that is exploited as the basis for image§compression algorithms presented in this book.§Several novel algorithms are developed applying SVM§learning to both directly model the colour surface§and model transform coefficients after the surface§has been transformed into the frequency domain. It is§demonstrated that compression is more efficient in§frequency space.§In the frequency domain, results are superior to that§of JPEG. For example, the quality of the industry§standard Lena image compressed 63:1 for JPEG is§slightly worse quality than the same image compressed§192:1 with the RKi-1 algorithm detailed in this book.

Możesz być zainteresowany

109.50

Once Upon a Zzzz

Maddie Frost
55.91
125.47
177.01

Klienci, którzy kupili tę książkę, kupili również