Open access peer-reviewed Edited Volume

Visual Object Tracking with Deep Neural Networks

Book metrics overview

10,153 Chapter Downloads

View Full Metrics

Academic Editor

Pier Luigi Mazzeo

Italian National Research Council

Co-editors

Srinivasan Ramakrishnan

Dr. Mahalingam College of Engineering and Technology

Paolo Spagnolo

Italian National Research Council

PublishedDecember 18th, 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

Read more
Order Print Copy

Edited Volume and chapters are indexed in

  • Google Scholar
  • DOAB
  • Crossref
  • Dimension
  • OpenAIRE
  • AZ ebsco
  • Worldcat
Show more

Table of Contents

Open access  chapters

1. Deep Siamese Networks toward Robust Visual Tracking

By Mustansar Fiaz, Arif Mahmood and Soon Ki Jung

1,489
2
2. Multi-Person Tracking Based on Faster R-CNN and Deep Appearance Features

By Gulraiz Khan, Zeeshan Tariq and Muhammad Usman Ghani Khan

2,203
8
4. Deep-Facial Feature-Based Person Reidentification for Authentication in Surveillance Applications

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

1,048
1
1,416
1
6. Spatial Domain Representation for Face Recognition

By Toshanlal Meenpal, Aarti Goyal and Moumita Mukherjee

825
2
772
8. Matrix Factorization on Complex Domain for Face Recognition

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

817
1

IMPACT OF THIS BOOK AND ITS CHAPTERS

10,153 Total Chapter Downloads

19 Crossref Citations

9 Web of Science Citations

26 Dimensions Citations

Order a print copy of this book

£119 (ex. VAT)*

Hardcover | Printed Full Colour

IntechOpen Contributor? Get your Discount

FREE SHIPPING WORLDWIDE

Order & Delivery info

* Residents of European Union countries need to add a Book Value-Added Tax Rate based on their country of residence. Institutions and companies, registered as VAT taxable entities in their own EU member state, will not pay VAT by providing IntechOpen with their VAT registration number. This is made possible by the EU reverse charge method.

Instructor? Request an Exam Copy