- Practical Convolutional Neural Networks
- Mohit Sewak Md. Rezaul Karim Pradeep Pujari
- 318字
- 2021-06-24 18:58:48
What this book covers
Chapter 1, Deep Neural Networks - Overview, it gives a quick refresher of the science of deep neural networks and different frameworks that can be used to implement such networks, with the mathematics behind them.
Chapter 2, Introduction to Convolutional Neural Networks, it introduces the readers to convolutional neural networks and shows how deep learning can be used to extract insights from images.
Chapter 3, Build Your First CNN and Performance Optimization, constructs a simple CNN model for image classification from scratch, and explains how to tune hyperparameters and optimize training time and performance of CNNs for improved efficiency and accuracy respectively.
Chapter 4, Popular CNN Model Architectures, shows the advantages and working of different popular (and award winning) CNN architectures, how they differ from each other, and how to use them.
Chapter 5, Transfer Learning, teaches you to take an existing pretrained network and adapt it to a new and different dataset. There is also a custom classification problem for a real-life application using a technique called transfer learning.
Chapter 6, Autoencoders for CNN, introduces an unsupervised learning technique called autoencoders. We walk through different applications of autoencoders for CNN, such as image compression.
Chapter 7, Object Detection and Instance Segmentation with CNN, teaches the difference between object detection, instance segmentation, and image classification. We then learn multiple techniques for object detection and instance segmentation with CNNs.
Chapter 8, GAN—Generating New Images with CNN, explores generative CNN Networks, and then we combine them with our learned discriminative CNN networks to create new images with CNN/GAN.
Chapter 9, Attention Mechanism for CNN and Visual Models, teaches the intuition behind attention in deep learning and learn how attention-based models are used to implement some advanced solutions (image captioning and RAM). We also understand the different types of attention and the role of reinforcement learning with respect to the hard attention mechanism.
- 有趣的二進制:軟件安全與逆向分析
- Python數據分析入門:從數據獲取到可視化
- App+軟件+游戲+網站界面設計教程
- 工業(yè)大數據分析算法實戰(zhàn)
- 云計算服務保障體系
- Dependency Injection with AngularJS
- 大數據精準挖掘
- 區(qū)塊鏈技術應用與實踐案例
- Expert Python Programming(Third Edition)
- Mastering ROS for Robotics Programming(Second Edition)
- Oracle 11g+ASP.NET數據庫系統開發(fā)案例教程
- Deep Learning with R for Beginners
- 數據中臺實戰(zhàn):手把手教你搭建數據中臺
- 云原生架構:從技術演進到最佳實踐
- 大數據隱私保護技術與治理機制研究