Binocular Vision-Based Human Ranging Algorithm Based on Human Faces Recognition

In the field of security, timely and effective identification is very important for safeguarding public safety, national security and information security. Face recognition is an important technology in these areas. The calculation of range plays an important role in protecting safety and tracking suspects. Binocular stereo vision ranging has wide application in non-contact precise measurement and dangerous scenes. In this paper, a binocular range measurement system based on face recognition is proposed. The system can detect and recognize faces and calculate its real time range. It could realize tracking real time faces and calculate its distance from the cameras and locate them. And it suits the feature of special places of high security and preventing the suspicious people from entering and out.

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