在密集的视差图中跟踪自闭塞的铰接物体

N. Jojic, M. Turk, Thomas S. Huang
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引用次数: 92

摘要

本文提出了一种基于立体图像序列的密集视差图中铰接结构的实时跟踪算法。在我们的跟踪方法中,考虑遮挡的统计图像形成模型起着核心作用。该图形模型(贝叶斯网络)假设结构的每个部分的距离图像是通过从三维高斯分布中绘制深度候选者形成的。相对于经典高斯混合的优势在于,我们的模型通过选择最小深度来考虑遮挡(这可以被视为z缓冲的概率版本)。该模型还在结构的各个部分之间强制执行衔接约束。将跟踪问题表述为图像形成模型中的推理问题。除了本文描述的任务外,该模型还可以扩展并用于其他任务,还可以用于估计概率分布函数,而不是对跟踪参数的ML估计。为了实时跟踪的目的,我们在推理过程中使用了一定的近似,从而形成了实时的两阶段推理算法。我们能够在自我遮挡的情况下成功地实时跟踪上半身的运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking self-occluding articulated objects in dense disparity maps
In this paper, we present an algorithm for real-time tracking of articulated structures in dense disparity maps derived from stereo image sequences. A statistical image formation model that accounts for occlusions plays the central role in our tracking approach. This graphical model (a Bayesian network) assumes that the range image of each part of the structure is formed by drawing the depth candidates from a 3-D Gaussian distribution. The advantage over the classical mixture of Gaussians is that our model takes into account occlusions by picking the minimum depth (which could be regarded as a probabilistic version of z-buffering). The model also enforces articulation constraints among the parts of the structure. The tracking problem is formulated as an inference problem in the image formation model. This model can be extended and used for other tasks in addition to the one described in the paper and can also be used for estimating probability distribution functions instead of the ML estimates of the tracked parameters. For the purposes of real-time tracking, we used certain approximations in the inference process, which resulted in a real-time two-stage inference algorithm. We were able to successfully track upper human body motion in real time and in the presence of self-occlusions.
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CiteScore
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