Deep Learning for Computer Vision with SAS. Robert Blanchard

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Deep Learning for Computer Vision with SAS - Robert Blanchard

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      The correct bibliographic citation for this manual is as follows: Blanchard, Robert 2020. Deep Learning for Computer Vision with SAS®: An Introduction. Cary, NC: SAS Institute Inc.

      Deep Learning for Computer Vision with SAS®: An Introduction

      Copyright © 2020, SAS Institute Inc., Cary, NC, USA

      ISBN 978-1-64295-972-7 (Hardcover)

      ISBN 978-1-64295-915-4 (Paperback)

      ISBN 978-1-64295-916-1 (PDF)

      ISBN 978-1-64295-917-8 (EPUB)

      ISBN 978-1-64295-918-5 (Kindle)

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      June 2020

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      Contents

       Contents

       About This Book

       About The Author

       Chapter 1: Introduction to Deep Learning

       Introduction to Neural Networks

       Biological Neurons

       Deep Learning

       Traditional Neural Networks versus Deep Learning

       Building a Deep Neural Network

       Demonstration 1: Loading and Modeling Data with Traditional Neural Network Methods

       Demonstration 2: Building and Training Deep Learning Neural Networks Using CASL Code

       Chapter 2: Convolutional Neural Networks

       Introduction to Convoluted Neural Networks

       Input Layers

       Convolutional Layers

       Using Filters

       Padding

       Feature Map Dimensions

       Pooling Layers

       Traditional Layers

       Demonstration 1: Loading and Preparing Image Data

       Demonstration 2: Building and Training a Convolutional Neural Network

       Chapter 3: Improving Accuracy

       Introduction

       Architectural Design Strategies

       Image Preprocessing and Data Enrichment

       Transfer Learning Introduction

       Domains and Subdomains

       Types of Transfer Learning

       Transfer Learning Biases

       Transfer Learning Strategies

       Customizations with FCMP

       Tuning a Deep Learning Model

       Chapter 4: Object Detection

       Introduction

       Types of Object Detection Algorithms

       Data Preparation and Prediction Overview

       Normalized Locations

       Multi-Loss Error Function

       Error Function Scalars

      

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