Composing Fisher Kernels from Deep Neural Models

A Practitioner's Approach

Nonfiction, Computers, Advanced Computing, Engineering, Computer Vision, Science & Nature, Technology, Electronics, General Computing
Cover of the book Composing Fisher Kernels from Deep Neural Models by Tayyaba Azim, Sarah Ahmed, Springer International Publishing
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Tayyaba Azim, Sarah Ahmed ISBN: 9783319985244
Publisher: Springer International Publishing Publication: August 23, 2018
Imprint: Springer Language: English
Author: Tayyaba Azim, Sarah Ahmed
ISBN: 9783319985244
Publisher: Springer International Publishing
Publication: August 23, 2018
Imprint: Springer
Language: English

This book shows machine learning enthusiasts and practitioners how to get the best of both worlds by deriving Fisher kernels from deep learning models. In addition, the book shares insight on how to store and retrieve large-dimensional Fisher vectors using feature selection and compression techniques. Feature selection and feature compression are two of the most popular off-the-shelf methods for reducing data’s high-dimensional memory footprint and thus making it suitable for large-scale visual retrieval and classification. Kernel methods long remained the de facto standard for solving large-scale object classification tasks using low-level features, until the revival of deep models in 2006. Later, they made a comeback with improved Fisher vectors in 2010. However, their supremacy was always challenged by various versions of deep models, now considered to be the state of the art for solving various machine learning and computer vision tasks. Although the two research paradigms differ significantly, the excellent performance of Fisher kernels on the Image Net large-scale object classification dataset has caught the attention of numerous kernel practitioners, and many have drawn parallels between the two frameworks for improving the empirical performance on benchmark classification tasks. Exploring concrete examples on different data sets, the book compares the computational and statistical aspects of different dimensionality reduction approaches and identifies metrics to show which approach is superior to the other for Fisher vector encodings. It also provides references to some of the most useful resources that could provide practitioners and machine learning enthusiasts a quick start for learning and implementing a variety of deep learning models and kernel functions.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

This book shows machine learning enthusiasts and practitioners how to get the best of both worlds by deriving Fisher kernels from deep learning models. In addition, the book shares insight on how to store and retrieve large-dimensional Fisher vectors using feature selection and compression techniques. Feature selection and feature compression are two of the most popular off-the-shelf methods for reducing data’s high-dimensional memory footprint and thus making it suitable for large-scale visual retrieval and classification. Kernel methods long remained the de facto standard for solving large-scale object classification tasks using low-level features, until the revival of deep models in 2006. Later, they made a comeback with improved Fisher vectors in 2010. However, their supremacy was always challenged by various versions of deep models, now considered to be the state of the art for solving various machine learning and computer vision tasks. Although the two research paradigms differ significantly, the excellent performance of Fisher kernels on the Image Net large-scale object classification dataset has caught the attention of numerous kernel practitioners, and many have drawn parallels between the two frameworks for improving the empirical performance on benchmark classification tasks. Exploring concrete examples on different data sets, the book compares the computational and statistical aspects of different dimensionality reduction approaches and identifies metrics to show which approach is superior to the other for Fisher vector encodings. It also provides references to some of the most useful resources that could provide practitioners and machine learning enthusiasts a quick start for learning and implementing a variety of deep learning models and kernel functions.

More books from Springer International Publishing

Cover of the book Playful Memories by Tayyaba Azim, Sarah Ahmed
Cover of the book Putting Tradition into Practice: Heritage, Place and Design by Tayyaba Azim, Sarah Ahmed
Cover of the book Electricity Markets with Increasing Levels of Renewable Generation: Structure, Operation, Agent-based Simulation, and Emerging Designs by Tayyaba Azim, Sarah Ahmed
Cover of the book Electronic Government and the Information Systems Perspective by Tayyaba Azim, Sarah Ahmed
Cover of the book Grammar, Philosophy, and Logic by Tayyaba Azim, Sarah Ahmed
Cover of the book Simulation and Modeling Methodologies, Technologies and Applications by Tayyaba Azim, Sarah Ahmed
Cover of the book Security and Trust Management by Tayyaba Azim, Sarah Ahmed
Cover of the book Extended Abstracts Spring 2018 by Tayyaba Azim, Sarah Ahmed
Cover of the book The Mathematical Theory of Time-Harmonic Maxwell's Equations by Tayyaba Azim, Sarah Ahmed
Cover of the book Regenerative Medicine - from Protocol to Patient by Tayyaba Azim, Sarah Ahmed
Cover of the book A Solar Car Primer by Tayyaba Azim, Sarah Ahmed
Cover of the book Limited Statehood in Post-Revolutionary Tunisia by Tayyaba Azim, Sarah Ahmed
Cover of the book Clinical Echocardiography and Other Imaging Techniques in Cardiomyopathies by Tayyaba Azim, Sarah Ahmed
Cover of the book A Micro-History of Victorian Liberal Parenting by Tayyaba Azim, Sarah Ahmed
Cover of the book Practical Pharmaceutics by Tayyaba Azim, Sarah Ahmed
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy