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A method for people counting using feature fusion based on SVR with PSO optimization

机译:基于PVR优化的基于SVR的特征融合的人数统计方法

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For low density crowd, the statistical information of pixels and feature points can reflect the change of crowd density. Therefore, pixels and corners are fused in this paper, then, SVR is used to learn the corresponding relationship between feature and the number of people. While PSO is used to optimize the choice of parameters C and gamma in SVR. The experimental results show that the SVR optimized by PSO has better prediction accuracy.
机译:对于低密度人群,像素和特征点的统计信息可以反映人群密度的变化。因此,本文将像素和角融合在一起,然后利用SVR来学习特征与人数之间的对应关系。虽然PSO用于优化SVR中参数C和伽玛的选择。实验结果表明,经PSO优化的SVR具有更好的预测精度。

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