Automatic Human Identification Via CCTV Using Gait Analysis

Authors

  • Shamna A L  Department of Computer Science and Engineering, College of Engineering Pathanapuram , Pathanpuram, Kollam, Kerala, India
  • Ranjith E  Department of Computer Science and Engineering, College of Engineering Pathanapuram , Pathanpuram, Kollam, Kerala, India
  • Himesh S  Department of Computer Science and Engineering, Younus College of Engineering and Technology, Pallimukku, Vadakkevila, Kollam, Kerala, India
  • Jerin Shaji  Department of Computer Science and Engineering, College of Engineering Pathanapuram , Pathanpuram, Kollam, Kerala, India
  • Hariharan B  Department of Computer Science and Engineering, College of Engineering Pathanapuram , Pathanpuram, Kollam, Kerala, India

Keywords:

Human Identification, Gait Analysis, Surveillance System, Face Recognition

Abstract

Human identification using gait has received an increasing attention from the research community due to a rapid deployment of CCTV cameras. Even a small shop to large corporate office have this surveillance system. Human identification can serve many purposes. It can be used for access control, allows prosecution when a crime was committed or can even serve as an early warning system to enable the prevention of crimes. In this project we suggest a cost effective way to make the existing system to automatically identify a person using face and motion detection. However face recognition require both high resolution images and a relatively short distance but gait recognition can be used at long distances and does not require high resolution images and hence could be used in public with CCTV cameras. Here we create a processing module using raspberry pi 3 for this purpose and connect all existing surveillance systems to a single network. This module is connected to cloud server and it processes the CCTV video to detect the person. A single surveillance system requires only one module. If we provide information of a person in the server, whenever the person appear on any of CCTV connected to the network an automatic detection of corresponding person is done.

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Published

2019-06-07

Issue

Section

Research Articles

How to Cite

[1]
Shamna A L, Ranjith E, Himesh S, Jerin Shaji, Hariharan B, " Automatic Human Identification Via CCTV Using Gait Analysis, International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 5, Issue 9, pp.59-64, May-2019.