Abstract
Providing security to the citizens is one of the most important and complex task for the governments around the world which they have to deal with. Street crimes and theft are the biggest threats for the citizens and their belonging. In order to provide security, there is an urgent need of a system that is capable of identifying the criminal in the crowded area. This paper proposes a facial recognition system using Local Binary Patterns Histogram Face recognizer mounted on drone technology. The facial recognition capability is a key feature for a drone to have in order to find or identify the person within the crowd. With the inception of drone technology in the proposed system, we can use it as a surveillance drone as well through which it can cover more area as compared to the stationary system. As soon as the system identifies the desired person, it tags him and transmits the image along with the co-ordinates of the location to the concerned authorities using mounted global positioning system. Proposed system is capable of identifying the person with the accuracy of approximately 89.1%.
Highlights
It is a fact that the face is an inherited identity of a person
A system based on facial recognition system is more suitable for the people who are not willing to collaborate with other means of biometric identification system such as finger print, iris or hand scan
Since the introduction of Artificial Intelligence (AI), facial recognition system has become a worthy tool for the application such as this one
Summary
It is a fact that the face is an inherited identity of a person. A system based on facial recognition system is more suitable for the people who are not willing to collaborate with other means of biometric identification system such as finger print, iris or hand scan. Facial recognition algorithm proposed by Cheng et al.[1] introduces a deep sparse representation classifier to detect the facial features and identify the face of a person.
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