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Bayesian linear regression for crowd density estimation in aerial images

机译:贝叶斯线性回归用于航空图像人群密度估计

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In this paper, we propose a Bayesian linear regression method for person density estimation in extremely crowded areas in aerial images. The fundamental idea is to learn a mapping function from local features to crowd density. In order to describe the appearances of persons within a crowd in aerial images, local texture features are computed for each small local neighborhood. Then we cast the problem as a linear regression. In order to model the nonlinearity between local features and crowd density, Gaussian basis functions are used and their locations are determined by a k-means clustering. Crowd density can be estimated by Bayesian inference. However, due to the presence of a hyper-prior distribution, variational inference is applied to compute the predictive distribution. Through experiments, the effectiveness of the proposed method for crowd density estimation is demonstrated.
机译:在本文中,我们提出了一种贝叶斯线性回归方法,用于估计航空图像中非常拥挤的区域中的人员密度。基本思想是学习从局部特征到人群密度的映射功能。为了描述航空图像中人群中的人的外观,针对每个小的局部邻域计算局部纹理特征。然后,我们将该问题转换为线性回归。为了对局部特征和人群密度之间的非线性进行建模,使用了高斯基函数,并通过k均值聚类确定了它们的位置。人群密度可以通过贝叶斯推断来估计。但是,由于存在超先验分布,因此应用了变分推理来计算预测分布。通过实验,证明了该方法在人群密度估计中的有效性。

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