Composing fisher kernels from deep neural models : a practitioner's approach /: a practitioner's approach. ([2018])
- Record Type:
- Book
- Title:
- Composing fisher kernels from deep neural models : a practitioner's approach /: a practitioner's approach. ([2018])
- Main Title:
- Composing fisher kernels from deep neural models : a practitioner's approach
- Further Information:
- Note: Tayyaba Azim, Sarah Ahmed.
- Authors:
- Azim, Tayyaba
Ahmed, Sarah - Contents:
- Intro; Preface; Acknowledgements; Contents; Acronyms; 1 Kernel Based Learning: A Pragmatic Approach in the Face of New Challenges; 1.1 Kernel Learning Framework; 1.1.1 Kernel Definition; 1.2 Characteristics of Kernel Functions; 1.3 Kernel Trick; 1.4 Types of Kernel Functions; 1.5 Challenges Faced by Kernel Methods and Recent Advances in Large-Scale Kernel Methods; References; 2 Fundamentals of Fisher Kernels; 2.1 Introduction; 2.2 The Fisher Kernel; 2.2.1 Fisher Vector Normalisation; 2.2.2 Properties of Fisher Kernels; 2.2.3 Applications of Fisher Kernels. 2.2.4 Illustration of Fisher Kernel Extraction from Multivariate Gaussian Model2.2.5 Illustration of Fisher Kernel Derived from Gaussian Mixture Model (GMM); References; 3 Training Deep Models and Deriving Fisher Kernels: A Step Wise Approach; 3.1 How to Train Deep Models?; 3.1.1 Data Preprocessing; 3.1.2 Selection of an Activation Function; 3.1.3 Selecting the Number of Hidden Layers and Hidden Units; 3.1.4 Initializing Weights of Deep models; 3.1.5 Learning Rate; 3.1.6 The Size of Mini-Batch and Stochastic Learning; 3.1.7 Regularisation Parameter. 3.1.8 Number of Iterations of Gradient Based Algorithms3.1.9 Parameter Tuning: Evade Grid Search-Embrace Random Search; 3.2 Constructing Fisher Kernels from Deep Models; 3.2.1 Demonstration of Fisher Kernel Extraction from Restricted Boltzmann Machine (RBM); 3.2.2 MATLAB Implementation of Fisher Kernel Derived from Restricted Boltzmann Machine (RBM); 3.2.3 Illustration ofIntro; Preface; Acknowledgements; Contents; Acronyms; 1 Kernel Based Learning: A Pragmatic Approach in the Face of New Challenges; 1.1 Kernel Learning Framework; 1.1.1 Kernel Definition; 1.2 Characteristics of Kernel Functions; 1.3 Kernel Trick; 1.4 Types of Kernel Functions; 1.5 Challenges Faced by Kernel Methods and Recent Advances in Large-Scale Kernel Methods; References; 2 Fundamentals of Fisher Kernels; 2.1 Introduction; 2.2 The Fisher Kernel; 2.2.1 Fisher Vector Normalisation; 2.2.2 Properties of Fisher Kernels; 2.2.3 Applications of Fisher Kernels. 2.2.4 Illustration of Fisher Kernel Extraction from Multivariate Gaussian Model2.2.5 Illustration of Fisher Kernel Derived from Gaussian Mixture Model (GMM); References; 3 Training Deep Models and Deriving Fisher Kernels: A Step Wise Approach; 3.1 How to Train Deep Models?; 3.1.1 Data Preprocessing; 3.1.2 Selection of an Activation Function; 3.1.3 Selecting the Number of Hidden Layers and Hidden Units; 3.1.4 Initializing Weights of Deep models; 3.1.5 Learning Rate; 3.1.6 The Size of Mini-Batch and Stochastic Learning; 3.1.7 Regularisation Parameter. 3.1.8 Number of Iterations of Gradient Based Algorithms3.1.9 Parameter Tuning: Evade Grid Search-Embrace Random Search; 3.2 Constructing Fisher Kernels from Deep Models; 3.2.1 Demonstration of Fisher Kernel Extraction from Restricted Boltzmann Machine (RBM); 3.2.2 MATLAB Implementation of Fisher Kernel Derived from Restricted Boltzmann Machine (RBM); 3.2.3 Illustration of Fisher Kernel Extraction from Deep Boltzmann Machine; 3.2.4 MATLAB Implementation of Fisher Kernel Derived from Deep Boltzmann Machine (DBM); References; 4 Large Scale Image Retrieval and Its Challenges. 4.1 Condensing Deep Fisher Vectors: To Choose or to Compress?4.2 How to Detect Multi-collinearity?; 4.2.1 Variance Inflation Factor (VIF); 4.3 Feature Compression Methods; 4.3.1 Linear Feature Compression Methods; 4.3.2 Non-linear Feature Compression Methods; 4.4 Feature Selection Methods; 4.4.1 Feature Selection via Filter Methods; 4.4.2 Feature Selection via Wrapper Methods; 4.4.3 Feature Selection via Embedded Methods; 4.5 Hands on Fisher Vector Condensation for Large Scale Data Retrieval; 4.5.1 Minimum Redundancy and Maximum Relevance (MRMR); 4.5.2 Parametric t-SNE; References. 5 Open Source Knowledge Base for Machine Learning Practitioners5.1 Benchmark Data Sets; 5.2 Standard Toolboxes and Frameworks: A Comparative Review; References. … (more)
- Publisher Details:
- Cham, Switzerland : Springer
- Publication Date:
- 2018
- Copyright Date:
- 2018
- Extent:
- 1 online resource
- Subjects:
- 515.7
Computer science
Kernel functions
Support vector machines
MATHEMATICS -- Calculus
MATHEMATICS -- Mathematical Analysis
Kernel functions
Support vector machines
Technology & Engineering -- Electronics -- General
Computers -- System Administration -- Storage & Retrieval
Computers -- Mathematical & Statistical Software
Computers -- Intelligence (AI) & Semantics
Imaging systems & technology
Information retrieval
Maths for computer scientists
Data mining
Artificial intelligence
Optical pattern recognition
Information storage and retrieva
Artificial intelligence
Computers -- Computer Vision & Pattern Recognition
Pattern recognition
Electronic books - Languages:
- English
- ISBNs:
- 9783319985244
3319985248 - Related ISBNs:
- 9783319985237
331998523X - Notes:
- Note: Includes bibliographical references.
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