Real Time Target Tracking with Pan Tilt Zoom Camera

Pankaj Kumar, A. Dick, Tan Soo Sheng
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引用次数: 28

Abstract

We present an approach for real-time tracking of a non-rigid target with a moving pan-tilt-zoom (PTZ) camera. The tracking of the object and control of the camera is handled by one computer in real time. The main contribution of the paper is method for target representation, localisation and detection, which takes into account both foreground and background properties, and is more discriminative than the common colour histogram based back-projection. A Bayesian hypothesis test is used to decide whether each pixel is occupied by the target or not. We show that this target representation is suitable for use with a Continuously Adaptive Mean Shift (CAMSHIFT) tracker. Experiments show that this leads to a tracking system that is efficient and accurate enough to guide a PTZ camera to follow a moving target in real time, despite the presence of background clutter and partial occlusion.
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实时目标跟踪与平移倾斜变焦相机
提出了一种利用移动平移-倾斜-变焦(PTZ)相机实时跟踪非刚性目标的方法。目标的跟踪和摄像机的控制由一台计算机实时完成。本文的主要贡献在于目标表示、定位和检测方法,该方法同时考虑了前景和背景属性,比基于颜色直方图的常见反投影更具判别性。使用贝叶斯假设检验来确定每个像素是否被目标占用。我们证明了这种目标表示适用于连续自适应均值移位(CAMSHIFT)跟踪器。实验表明,尽管存在背景杂波和部分遮挡,但这导致跟踪系统足够有效和准确地引导PTZ相机实时跟踪移动目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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