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A Computationally Efficient Algorithm for Building Statistical Color Models

机译:建立统计颜色模型的计算有效算法

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Though widely used in surveillance systems of human or fire detection, statistical color models suffer from long training time during parametric estimation. To solve this low-dimension huge-number density estimation problem, we propose a computationally efficient algorithm: weighted EM, which learns the parameters of finite mixture distribution from the histogram of training data. Thus by representing data with a small number of parameters, we significantly reduce long-time storage costs. At the same time, estimating parameters from the histogram of relatively small size ensures the computational efficiency. The algorithm can be readily applied to any mixture model which can be estimated by EM and its online learning form is also given in our paper. In the experiment of skin detection, the algorithm is tested in a database of nearly half a billion training samples, and the results show that our algorithm can do density estimation accurately and enjoys significantly better computational and storage efficiency.
机译:尽管统计色彩模型广泛用于人体或火灾探测的监视系统中,但在参数估计过程中训练时间长。为了解决此低维庞大数密度估计问题,我们提出了一种计算有效的算法:加权EM,该算法从训练数据的直方图中学习有限混合分布的参数。因此,通过使用少量参数表示数据,我们可以大大降低长期存储成本。同时,从较小尺寸的直方图中估计参数可确保计算效率。该算法可以很容易地应用于可以由EM估计的任何混合模型,并且在本文中还给出了其在线学习形式。在皮肤检测实验中,该算法在将近十亿个训练样本的数据库中进行了测试,结果表明我们的算法可以准确地进行密度估计,并具有明显更好的计算和存储效率。

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