Một thuật toán phát hiện bất thường dựa vào quỹ đạo trong giám sát video
Abstract
This paper proposes a technique to detect abnormalities in the video surveillance based on motion trajectory. The proposed technique is based on the nature of the route which has a certain influence on objects moving on that route, thereby we have given a representations routes by segments, combined used Hausdorff distance to calculate the similarity between trajectories. Therefore, the proposed technique can detect abnormalities, even when the object is not complete orbital motion, thus the system can response the video monitoring real-time.
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