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E-raamat: Visual Object Tracking using Deep Learning

(Bharati Vidyapeeth's College of Engineering, India)
  • Formaat: 216 pages
  • Ilmumisaeg: 20-Nov-2023
  • Kirjastus: CRC Press
  • Keel: eng
  • ISBN-13: 9781000991000
  • Formaat - EPUB+DRM
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  • Formaat: 216 pages
  • Ilmumisaeg: 20-Nov-2023
  • Kirjastus: CRC Press
  • Keel: eng
  • ISBN-13: 9781000991000

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"The text comprehensively discusses tracking architecture under stochastic and deterministic frameworks and presents experimental results under each framework with qualitative and quantitative analysis. It covers deep learning techniques for feature extraction, template matching, and training the networks in tracking algorithms"--

The text comprehensively discusses tracking architecture under stochastic and deterministic frameworks and presents experimental results under each framework with qualitative and quantitative analysis. It covers deep learning techniques for feature extraction, template matching, and training the networks in tracking algorithms.

  • Discusses performance metrics for visual tracking in comparing the efficiency and effectiveness of available datasets.
  • Covers performance metrics such as center location error, F-Measure, area under control, distance precision, and overlap precision.
  • Compares the performance of deep learning trackers with traditional methods, wherein hand-crafted features were fused to reduce the computational complexity.
  • Illustrates stochastic framework for visual tracking such as probabilistic methods in the Bayesian framework for state estimation.

The text presents both traditional and advanced methods such as stochastic, deterministic, generative, discriminative framework, and deep learning-based appearance models. It further highlights the use of deep learning for feature extraction, template matching, and training the networks in tracking algorithms. The book covers context-aware, and super pixel-based correlation filter tracking. The text is primarily written for senior undergraduate, graduate students, and academic researchers in the fields of electrical engineering, electronics and communication engineering, computer engineering, and information technology.



The text comprehensively discusses tracking architecture under stochastic and deterministic frameworks and presents experimental results under each framework with qualitative and quantitative analysis. It covers deep learning techniques for feature extraction, template matching, and training the networks in tracking algorithms.

Chapter 1
Introduction to visual tracking in video sequences

1.1 Overview of visual tracking in video sequences
1.2 Motivation and challenges
1.3 Real-time applications of visual tracking
1.4 Emergence from the conventional to deep learning approaches
1.5 Performance evaluation criteria
1.6 Summary

Chapter 2
Background and research orientation for visual tracking appearance model: Standards and Models

2.1 Background and preliminaries
2.2 Conventional tracking methods
2.3 Deep learning-based methods
2.4 Correlation filter based visual trackers
2.5 Summary

Chapter 3
Target feature extraction for robust appearance model

3.1. Saliency feature extraction for visual tracking
3.2 Handcrafted features
3.3 Deep learning for feature extraction
3.4 Multi-feature fusion for efficient tracking
3.5 Summary

Chapter 4
Performance metrics for visual tracking: A Qualitative and Quantitative analysis

4.1 Introduction
4.2 Performance metrics for tracker evaluation
4.3 Performance metrics without ground truth
4.4 Performance metrics with ground truth
4.5 Summary

Chapter 5
Visual tracking datasets: Benchmark for Evaluation

5.1 Introduction
5.2 Problem with the self-generated datasets
5.3 Salient features of visual tracking public datasets


Chapter 6

Conventional framework for visual tracking: Challenges and solutions

6.1 Introduction
6.2 Deterministic tracking approach
6.2.1 Meanshift and its variant-based trackers
6.2.2 Multi-modal deterministic approach
6.3 Generative tracking approach
6.4 Discriminative tracking approach
6.5 Summary

Chapter 7

Stochastic framework for visual tracking: Challenges and Solutions
7.1 Introduction
7.2 Particle filter for visual tracking
7.3 Framework and procedure
7.4 Fusion of multi-feature and State estimation
7.5 Experimental Validation of the particle filter based tracker
7.6 Discussion on PF-variants based tracking
7.7 Summary

Chapter 8
Multi-stage and collaborative framework for visual tracking
8.1 Introduction
8.2 Multi-stage tracking algorithms
8.3 Framework and procedures
8.4 Collaborative tracking algorithms
8.5 Summary


Chapter 9
Deep learning based visual tracking model: A paradigm shift
9.1 Introduction
9.2 Deep learning-based tracking framework
9.3 Hyper-feature based deep learning networks
9.4 Multi-modal based deep learning trackers
9.5 Summary

Chapter 10
Correlation filter-based visual tracking model: Emergence and upgradation
10.1 Introduction
10.2 Correlation filter-based tracking framework
10.3 Deep Correlation Filter based trackers
10.4 Fusion-based correlation filter trackers
10.5 Discussion on correlation filter-based trackers
10.6 Summary

Chapter 11
Future prospects of visual tracking: Application Specific Analysis

11.1 Introduction
11.2 Pruning for deep neural architecture
11.3 Explainable AI
11.4 Application-specific visual tracking
11.6 Summary

Chapter 12
Deep learning-based multi-object tracking: Advancement for intelligent video analysis
12.1 Introduction
12.2 Multi-object tracking algorithms
12.3 Evaluation metrics for performance analysis
12.4 Benchmark for performance evaluation
12.5 Application of MOT algorithms
12.6 Limitations of existing MOT algorithms
12.7 Summary

Dr. Ashish Kumar, Ph.D., is working as an assistant professor with Bennett University, Greater Noida, U.P., India. He has completed his Ph.D. in Computer Science and Engineering from Delhi Technological University (formerly DCE), New Delhi, India in 2020. He has received best researcher award from the Delhi Technological University for his contribution in the computer vision domain. He has completed M.Tech with distinction in computer Science and Engineering from GGS Inderpratha University, New Delhi. He has published many research papers in various reputed national and international journals and conferences. His current research interests include object tracking, image processing, artificial intelligence, and medical imaging analysis.