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http://dx.doi.org/10.22156/CS4SMB.2019.9.3.030

A Study on Unmanned Image Tracking System based on Smart Phone  

Ahn, Byeong-tae (Liberal & Arts College, Anyang University)
Publication Information
Journal of Convergence for Information Technology / v.9, no.3, 2019 , pp. 30-35 More about this Journal
Abstract
An unattended recording system based on smartphone based image image tracking is rapidly developing. Among the existing products, a system that automatically tracks and rotates the object to be photographed using an infrared signal is very expensive for general users. Therefore, this paper proposes a mobile unattended recording system that enables automatic recording by anyone who uses a smartphone. The system consists of a commercial mobile camera, a servomotor that moves the camera from side to side, a microcontroller to control the motor, and a commercial wireless Bluetooth Earset for video audio input. In this paper, we designed a system that enables unattended recording through image tracking using smartphone.
Keywords
Video extraction; Deep running; Image extraction; Unattended moving; Bluetooth;
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