Overview
Unlock the full potential of computer vision with TensorFlow 2.0 in "TensorFlow 2.0 Computer Vision Cookbook." This comprehensive guide offers practical recipes for tackling various computer vision challenges. Covering everything from basic image classification to advanced generative adversarial networks, you'll master techniques to transform your digital vision tasks.
What this Book will help me do
- Learn to train and fine-tune object detection models like YOLOv3 for precise identification.
- Use TensorFlow features to analyze digital images for tasks such as age and gender prediction through AutoML.
- Implement image segmentation and classification using state-of-the-art deep learning approaches.
- Explore generative adversarial networks (GANs) for creating and enhancing image content.
- Gain advanced skills in video analysis and real-time processing of digital visual data.
Author(s)
The book, authored by None Martínez, brings valuable insights from an expert well-versed in both TensorFlow and computer vision. With a dedication to teaching and hands-on practices, None shares their expertise through a rich collection of practical recipes. The author's commitment to a structured learning approach ensures users can easily follow and implement the presented solutions.
Who is it for?
This book is aimed at computer vision engineers, deep learning enthusiasts, and professional developers working with digital visual content. It caters to readers familiar with Python who seek to deepen their understanding of TensorFlow for visual processing tasks. Whether you're streamlining existing workflows or stepping into advanced concepts, this book caters to your needs.