Computer Assistance Based Home Security Analysis

Nowadays, to secure a home became a very important topic to discuss on because now many people used to keep all their valuable belonging inside the home so it is very important to develop a system that can secure our home in a cost-efficient manner sofor that this project has develop a system that can secure our hose more efficiently. This project uses the method of computer vision to identify the face of the person so whenever a person come it will detect his/her face if its match with its data base then he/she will be allowed to enter into the house in case any unknown person come then by identifying his/her gesture the model can determine whether the person come unknowingly or he/she come to enter into house forcefully without the permission of house owner. So here in this project, model can successfully recognize the faces that are present in its data base and open the lock to allow that person to enter into the house. This home security system also alerts the house owner by sending a Gmail notification if any unknown person is trying to enter into the house by identifying his/her gesture. This helps the user to keep his/her house secure from robbery.

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