Markerless Motion Capture for Entrance Guard Systems



Volume 2, Issue 6
TAINCHI LU, KUANCHIEH SUNG, BOLIN JIANG

Published online: 13 December 2016
Article Views: 50

Abstract

This research presents a practical markerless motion capture method and uses motion estimation for developing an entrance guard system. In recent years, markerless motion capture is used to track human motions in various applications, from entertainment to surveillance. The markerless-based technology is more flexible and less cumbersome in comparison
with marker-based optical systems. In the first step, a binary image is calculated to carry out background subtraction and region partition. Afterward, we reconstruct an articulated skeleton model to measure the model-to-image similarity with the binary image to possess locations of the specific end joints. In addition, a decision tree is defined in advance to facilitate pose estimation. As a result, a valid or invalid command can be determined to control the door lock through the proposed entrance guard system. The current experiments demonstrate that this method can capture human motions and applies to the entrance guard system.

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To Cite this article

T. Lu, K. Sung and B. Jiang “Markerless motion capture for entrance guard systems,” International Journal of Technology and Engineering Studies, vol. 2, no. 6, pp. 172-179, 2016.