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Visual Saliency: From Pixel-Level to Object-Level Analysis

  • Jianming Zhang
  • Filip Malmberg
  • Stan Sclaroff

Table of contents

  1. Front Matter
    Pages i-vii
  2. Jianming Zhang, Filip Malmberg, Stan Sclaroff
    Pages 1-7
  3. Pixel-Level Saliency

    1. Front Matter
      Pages 9-9
    2. Jianming Zhang, Filip Malmberg, Stan Sclaroff
      Pages 11-31
    3. Jianming Zhang, Filip Malmberg, Stan Sclaroff
      Pages 33-44
    4. Jianming Zhang, Filip Malmberg, Stan Sclaroff
      Pages 45-61
  4. Object-Level Saliency

    1. Front Matter
      Pages 63-63
    2. Jianming Zhang, Filip Malmberg, Stan Sclaroff
      Pages 65-93
    3. Jianming Zhang, Filip Malmberg, Stan Sclaroff
      Pages 95-111
    4. Jianming Zhang, Filip Malmberg, Stan Sclaroff
      Pages 113-114
  5. Back Matter
    Pages 115-138

About this book

Introduction

This book will provide an introduction to recent advances in theory, algorithms and application of Boolean map distance for image processing. Applications include modeling what humans find salient or prominent in an image, and then using this for guiding smart image cropping, selective image filtering, image segmentation, image matting, etc.

In  this  book, the authors  present methods for both traditional and emerging saliency computation tasks, ranging from classical low-level tasks like pixel-level saliency detection to object-level tasks such as subitizing and salient object detection. For low-level tasks, the authors focus on pixel-level image processing approaches based on efficient distance transform. For object-level tasks, the authors propose data-driven methods using deep convolutional neural networks. The book includes both empirical and theoretical studies, together with implementation details of the proposed methods. Below are the key features for different types of readers.

For computer vision and image processing practitioners:

  • Efficient algorithms based on image distance transforms for two pixel-level saliency tasks;

  • Promising deep learning techniques for two novel object-level saliency tasks;

  • Deep neural network model pre-training with synthetic data;
  • Thorough deep model analysis including useful visualization techniques and generalization tests;

  • Fully reproducible with code, models and datasets available.

For researchers interested in the intersection between digital topological theories and computer vision problems:

  • Summary of theoretic findings and analysis of Boolean map distance;

  • Theoretic algorithmic analysis;

  • Applications in salient object detection and eye fixation prediction.

Students majoring in image processing, machine learning and computer vision:

This book provides up-to-date supplementary reading material for course topics like connectivity based image processing, deep learning for image processing;

Some easy-to-implement algorithms for course projects with data provided (as links in the book);

Hands-on programming exercises in digital topology and deep learning.

Keywords

Boolean Map Distance Saliency Salient Object Detection Eye Fixation Prediction Discrete Computational Topology Computer Vision Image Processing Digital Topology Image Segmentation Minimum Barrier Distance

Authors and affiliations

  • Jianming Zhang
    • 1
  • Filip Malmberg
    • 2
  • Stan Sclaroff
    • 3
  1. 1.Adobe Inc.San JoseUSA
  2. 2.Centre for Image AnalysisUppsala UniversityUppsalaSweden
  3. 3.Department of Computer ScienceBoston UniversityBostonUSA

Bibliographic information

  • DOI https://doi.org/10.1007/978-3-030-04831-0
  • Copyright Information Springer Nature Switzerland AG 2019
  • Publisher Name Springer, Cham
  • eBook Packages Computer Science
  • Print ISBN 978-3-030-04830-3
  • Online ISBN 978-3-030-04831-0
  • Buy this book on publisher's site