Open access peer-reviewed Edited Volume

Visual Object Tracking with Deep Neural Networks

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Academic Editor

Pier Luigi Mazzeo
Pier Luigi Mazzeo

Italian National Research Council (CNR),
Italy

Co-editors

Srinivasan Ramakrishnan
Srinivasan Ramakrishnan

Dr.Mahalingam College of Engineering and Technology, India

PAOLO SPAGNOLO
PAOLO SPAGNOLO

Institute of Applied Science and Intelligent Systems,
Italy

Published18 December 2019

Doi10.5772/intechopen.80142

ISBN978-1-78985-158-8

Print ISBN978-1-78985-157-1

eBook (PDF) ISBN978-1-78985-142-7

Copyright year2019

Number of pages206

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Edited Volume and chapters are indexed in

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  • DOAB
  • Crossref
  • Dimension
  • OpenAIRE
  • AZ ebsco
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Table of Contents

Open access  chapters

1. Deep Siamese Networks toward Robust Visual Tracking

By Mustansar Fiaz, Arif Mahmood and Soon Ki Jung

1,726
4
2. Multi-Person Tracking Based on Faster R-CNN and Deep Appearance Features

By Gulraiz Khan, Zeeshan Tariq and Muhammad Usman Ghani Khan

2,530
12
4. Deep-Facial Feature-Based Person Reidentification for Authentication in Surveillance Applications

By Yogameena Balasubramanian, Nagavani Chandrasekaran, Sangeetha Asokan and Saravana Sri Subramanian

1,285
1
1,704
3
6. Spatial Domain Representation for Face Recognition

By Toshanlal Meenpal, Aarti Goyal and Moumita Mukherjee

955
2
942
8. Matrix Factorization on Complex Domain for Face Recognition

By Viet-Hang Duong, Manh-Quan Bui and Jia-Ching Wang

978
1

IMPACT OF THIS BOOK AND ITS CHAPTERS

12,050 Total Chapter Downloads

27 Crossref Citations

9 Web of Science Citations

41 Dimensions Citations

13 Altmetric Score

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