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Counting Pedestrians Based on Weight-Minkowski-Dimension and Gaussian Process Regression

机译:基于重量水差基维和高斯过程回归计数行人

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A method is proposed to count the number of pedestrians based on Weight-Minkowski-Dimension and Gaussian process regression for fixed cameras surveillance.First of all,the crowd foreground was extracted using Gaussian mixture model,and then the Weight-Minkowski-Dimension,which count the boxes with weights that was calculated based on linear interpolation,was extracted in the binary image of foreground edge,and finally the number of crowd was predicted by and Gaussian process regression.And we evaluate the algorithm both in Fudan dataset and Pets2009 dataset.Experimental result shows that the Weight-Minkowski-Dimension not only responds the change of the crowd number,but also eliminates the influence of perspective distortions,thereby improves estimation accuracy.On the other hand,it performs better in crowded scene.
机译:提出了一种基于重量 - Minkowski-尺寸的行人数和用于固定摄像机监视的高斯过程回归的方法。首先,使用高斯混合模型提取人群前景,然后重量 - Minkowski维度提取计算具有基于线性插值计算的权重的框,在前景边缘的二进制图像中提取,最后通过和高斯进程回归预测人群数量和高斯进程回归。我们在Fudan DataSet和PETS2009数据集中评估算法。实验结果表明,重量 - Minkowski维度不仅响应人群数的变化,而且消除了透视扭曲的影响,从而提高了估计精度。另一方面,它在拥挤的场景中表现更好。

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