Video Object Tracking by Feature Point Descriptor and Template Matching

Authors

  • Andrés Ely Pat-Chan Tecnológico Nacional de México / IT de Mérida
  • Francisco Javier Hernandez-Lopez Centro de Investigación en Matemáticas, A.C.
  • Mario Renán Moreno-Sabido Tecnológico Nacional de México / IT de Mérida

DOI:

https://doi.org/10.13053/cys-29-3-4806

Keywords:

Video object tracking, template matching, feature point descriptors, deep learning

Abstract

The present research focuses on developing a method based on feature point descriptors and template matching and comparing its performance with a method based on deep learning. These methods have particular aspects in how they were implemented; some stand out for the simplicity of their structure and others for the complexity they entail. The methods presented in this work range from developing a basic template matching algorithm, developing an algorithm based on feature point descriptors incorporating the template matching qualities to obtain better results, to implementing a method based on deep learning. Performance and precision tests are carried out to compare the methods on a selected dataset of video object tracking.

Author Biographies

Andrés Ely Pat-Chan, Tecnológico Nacional de México / IT de Mérida

Andrés E. Pat-Chan received a B.E. degree in Computer Systems Engineering from the Mérida Institute of Technology, México, in 2018. He has collaborated and participated in academic research programs, publication of scientific articles, and presentations at various universities in México. He is currently collaborating on scientific projects at the Center for Research in Mathematics (CIMAT) in Mérida Yucatán, México. His main interests lie in artificial intelligence and computer vision projects. He was a scholarship recipient from the National Council of Humanities, Science, and Technologies (CONAHCYT).

Francisco Javier Hernandez-Lopez, Centro de Investigación en Matemáticas, A.C.

Francisco J. Hernandez-Lopez received a B.E. degree in Computer Systems Engineering from the San Luis Potosí Institute of Technology, México, in 2005. He received the M.Sc. and D.Sc. degrees in Computer Science from the Center for Research in Mathematics (CIMAT), México, in 2009 and 2014 respectively. He made a postdoctoral stay in CIMAT and he carried out consulting activities in image and video processing. Since 2014, he has been in the Computer Science Department at the CIMAT-Mérida, Yucatán, México. His main interests are in the areas of computer vision, image and video processing, parallel computing, and machine learning. He is a fellow of the National System of Researchers (SNI) of the Mexican Government. [http://www.cimat.mx/~fcoj23/]

Mario Renán Moreno-Sabido, Tecnológico Nacional de México / IT de Mérida

Mario R. Moreno-Sabido obtained a Master of Science degree with a specialty in Computer Systems from the University of the Americas Puebla. He is currently a Full-Time Professor at the Technological Institute of Mérida. His main areas of interest are Learning Environments and Software Engineering.

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Published

2025-09-25