Book Image

Python Image Processing Cookbook

By : Sandipan Dey
Book Image

Python Image Processing Cookbook

By: Sandipan Dey

Overview of this book

With the advancements in wireless devices and mobile technology, there's increasing demand for people with digital image processing skills in order to extract useful information from the ever-growing volume of images. This book provides comprehensive coverage of the relevant tools and algorithms, and guides you through analysis and visualization for image processing. With the help of over 60 cutting-edge recipes, you'll address common challenges in image processing and learn how to perform complex tasks such as object detection, image segmentation, and image reconstruction using large hybrid datasets. Dedicated sections will also take you through implementing various image enhancement and image restoration techniques, such as cartooning, gradient blending, and sparse dictionary learning. As you advance, you'll get to grips with face morphing and image segmentation techniques. With an emphasis on practical solutions, this book will help you apply deep learning techniques such as transfer learning and fine-tuning to solve real-world problems. By the end of this book, you'll be proficient in utilizing the capabilities of the Python ecosystem to implement various image processing techniques effectively.
Table of Contents (11 chapters)

Deep instance segmentation

Similar to deep semantic segmentation, deep instance segmentation also assigns a label to each pixel in an image. The labels collectively produce pixel-based masks for each object in an input image. The difference between these two techniques is that even if multiple objects have the same class label (for example, two cats and a dog in the input image shown in the following figure), the instance segmentation should report each object instance as a unique one (for example, a total of three unique objects: two cats and a dog), as opposed to the semantic segmentation that reports the total number of unique class labels found (for example, two unique classes, namely a cat and dog), as shown in the following screenshot:

In this recipe, you will learn how to use a pretrained mask R-CNN deep learning model to perform instance segmentation.

The region-based...