基于贝叶斯融合的热光谱与可见光谱相机数据快速背景自适应区域跟踪

R. Stolkin, D. Rees, M. Talha, I. Florescu
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引用次数: 25

摘要

本文提出了一种将红外热像仪和常规可见光谱彩色相机的像素信息进行优化组合的方法,用于跟踪运动目标。跟踪算法在每一帧中从零开始快速地重新学习每个相机模式的背景模型。首先,这可以自动调整决策过程中热信息和可见信息的相对重要性;其次,通过不断地重新加权目标模型中与当前背景最不同的部分的重要性,实现一定程度的“伪装目标”跟踪。此外,这种非常快速的背景适应确保了对大型,突然和任意摄像机运动的鲁棒性,从而使该方法成为机器人技术的有用工具,例如安装在移动机器人车辆上的泛倾斜炮塔的视觉伺服。该方法可用于跟踪任意形状或变形的任何物体,然而,热信息和可见信息的结合被证明对使机器人跟踪人特别有用。该方法也很重要,因为它可以很容易地扩展到从一个或任意多个成像模式的任意数量的统计独立特征的数据融合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian fusion of thermal and visible spectra camera data for region based tracking with rapid background adaptation
This paper presents a method for optimally combining pixel information from an infra-red thermal imaging camera, and a conventional visible spectrum colour camera, for tracking a moving target. The tracking algorithm rapidly re-learns its background models for each camera modality from scratch at every frame. This enables, firstly, automatic adjustment of the relative importance of thermal and visible information in decision making, and, secondly, a degree of “camouflage target” tracking by continuously re-weighting the importance of those parts of the target model that are most distinct from the present background at each frame. Furthermore, this very rapid background adaptation ensures robustness to large, sudden and arbitrary camera motion, and thus makes this method a useful tool for robotics, for example visual servoing of a pan-tilt turret mounted on a moving robot vehicle. The method can be used to track any kind of arbitrarily shaped or deforming object, however the combination of thermal and visible information proves particularly useful for enabling robots to track people. The method is also important in that it can be readily extended for data fusion of an arbitrary number of statistically independent features from one or arbitrarily many imaging modalities.
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