Develop and optimize deep learning models with advanced architectures. This book teaches you the intricate details and subtleties of the algorithms that are at the core of convolutional neural networks. In<i>Advanced Applied Deep Learning</i>, you will study advanced topics on CNN and object detecti
Advanced Applied Deep Learning : Convolutional Neural Networks and Object Detection
โ Scribed by Umberto Michelucci
- Publisher
- Apress
- Year
- 2019
- Tongue
- English
- Leaves
- 294
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Develop and optimize deep learning models with advanced architectures. This book teaches you the intricate details and subtleties of the algorithms that are at the core of convolutional neural networks. In Advanced Applied Deep Learning, you will study advanced topics on CNN and object detection using Keras and TensorFlow.
Along the way, you will look at the fundamental operations in CNN, such as convolution and pooling, and then look at more advanced architectures such as inception networks, resnets, and many more. While the book discusses theoretical topics, you will discover how to work efficiently with Keras with many tricks and tips, including how to customize logging in Keras with custom callback classes, what is eager execution, and how to use it in your models. Finally, you will study how object detection works, and build a complete implementation of the YOLO (you only look once) algorithm in Keras and TensorFlow. By the end of the book you will have implemented various models in Keras and learned many advanced tricks that will bring your skills to the next level.What You Will Learn
- See how convolutional neural networks and object detection work
- Save weights and models on disk
- Pause training and restart it at a later stage
- Use hardware acceleration (GPUs) in your code
- Work with the Dataset TensorFlow abstraction and use pre-trained models and transfer learning
- Remove and add layers to pre-trained networks to adapt them to your specific project
- Apply pre-trained models such as Alexnet and VGG16 to new datasets
Who This Book Is For
Scientists and researchers with intermediate-to-advanced Python and machine learning know-how. Additionally, intermediate knowledge of Keras and TensorFlow is expected.โฆ Table of Contents
Front Matter ....Pages i-xviii
Introduction and Development Environment Setup (Umberto Michelucci)....Pages 1-26
TensorFlow: Advanced Topics (Umberto Michelucci)....Pages 27-77
Fundamentals of Convolutional Neural Networks (Umberto Michelucci)....Pages 79-123
Advanced CNNs and Transfer Learning (Umberto Michelucci)....Pages 125-160
Cost Functions and Style Transfer (Umberto Michelucci)....Pages 161-193
Object Classification: An Introduction (Umberto Michelucci)....Pages 195-220
Object Localization: An Implementation in Python (Umberto Michelucci)....Pages 221-241
Histology Tissue Classification (Umberto Michelucci)....Pages 243-277
Back Matter ....Pages 279-285
โฆ Subjects
Computer Science; Python; Open Source
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