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Modern Computer Vision with PyTorch

Modern Computer Vision with PyTorch - Second Edition

By : V Kishore Ayyadevara, Yeshwanth Reddy
4 (21)
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Modern Computer Vision with PyTorch

Modern Computer Vision with PyTorch

4 (21)
By: V Kishore Ayyadevara, Yeshwanth Reddy

Overview of this book

Whether you are a beginner or are looking to progress in your computer vision career, this book guides you through the fundamentals of neural networks (NNs) and PyTorch and how to implement state-of-the-art architectures for real-world tasks. The second edition of Modern Computer Vision with PyTorch is fully updated to explain and provide practical examples of the latest multimodal models, CLIP, and Stable Diffusion. You’ll discover best practices for working with images, tweaking hyperparameters, and moving models into production. As you progress, you'll implement various use cases for facial keypoint recognition, multi-object detection, segmentation, and human pose detection. This book provides a solid foundation in image generation as you explore different GAN architectures. You’ll leverage transformer-based architectures like ViT, TrOCR, BLIP2, and LayoutLM to perform various real-world tasks and build a diffusion model from scratch. Additionally, you’ll utilize foundation models' capabilities to perform zero-shot object detection and image segmentation. Finally, you’ll learn best practices for deploying a model to production. By the end of this deep learning book, you'll confidently leverage modern NN architectures to solve real-world computer vision problems.
Table of Contents (27 chapters)
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1
Section 1: Fundamentals of Deep Learning for Computer Vision
5
Section 2: Object Classification and Detection
13
Section 3: Image Manipulation
17
Section 4: Combining Computer Vision with Other Techniques
24
Other Books You May Enjoy
25
Index

Using vector stores

The intuition of vector stores is as follows: if we can group all the vectors into a certain number of clusters, for a new vector, we can first identify the cluster that it is likely to belong to, and then we can calculate the distance of the new vector with the images that belong to the same cluster.

This process helps to avoid computation across all images, thereby reducing the computation time considerably.

FAISS is an open-source library built by Meta to perform fast approximate similarity search between vectors. There is a wide range of both open-source and proprietary vector store libraries. We strongly recommend you review those once you understand the need for vector stores through the following scenario.

Now that we have an understanding of vector stores, let’s go ahead and perform the following steps:

  1. Store the training image embeddings in a vector store.
  2. Compare the time it takes to retrieve the three closest images...
CONTINUE READING
83
Tech Concepts
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Programming languages
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Modern Computer Vision with PyTorch
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