Jump to content

Book Post Generator

⚠️ READ THESE BEFORE POSTING:

HOW TO POST BOOKS ? STEP BY STEP GUIDE

If book is not available on Google Books API, try searching on FF API

If book is not found or you're posting something other than a book, use Manual Post

Mastering Neural Network Computer Vision by Jean Anoma (.ePUB)

Featured Replies

Posted
  • Legendary Reader

📮 Mastering Neural Network Computer Vision by Jean Anoma (.ePUB)

Mastering Neural Network Computer Vision with TensorFlow and Keras provides a comprehensive guide to using TensorFlow and Keras for computer vision applications. The book enables readers to develop and exercise the skills needed to use sophisticated pre-trained computer vision models, build simple and more advanced neural network models, and optimize their performance. The different chapters of the book cover a comprehensive range of topics in computer vision and deep learning. The first chapter provides a theoretical introduction to computer vision and deep learning, and the second one provides an overview of TensorFlow and its capabilities. The subsequent chapters cover specific applications of neural networks in computer vision, such as image classification, image segmentation, and object detection, and how to tap into the power of transfer learning and pre-trained models to address those use cases. Finally, the remaining chapters cover how to design your own neural network, gather a proper dataset and train your model efficiently. They also cover image generation and ethical considerations around computer vision. By the end of this book, readers will have a strong understanding of the principles of deep learning and computer vision, as well as the skills needed to build advanced neural network models using TensorFlow.

Book Cover

♻️ Book's Info:

Author

Jean Anoma

Size

49MB

Category

Non-Fiction > Tech & Devices

File Type

ePUB

📥 Download Links:

https://uploda.sh/oyGNxi2o2ytW

https://devuploads.com/cumv2zalrkzj

Create an account or sign in to comment


Copyright © 2025 PageReaders.