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An evaluation of crowd counting methods, features and regression models

机译:人群计数方法,特征和回归模型的评估

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摘要

Existing crowd counting algorithms rely on holistic, local or histogram based features to capture crowd properties. Regression is then employed to estimate the crowd size. Insufficient testing across multiple datasets has made it difficult to compare and contrast different methodologies. This paper presents an evaluation across multiple datasets to compare holistic, local and histogram based methods, and to compare various image features and regression models. A K-fold cross validation protocol is followed to evaluate the performance across five public datasets: UCSD, PETS 2009, Fudan, Mall and Grand Central datasets. Image features are categorised into five types: size, shape, edges, keypoints and textures. The regression models evaluated are: Gaussian process regression (GPR), linear regression, K nearest neighbours (KNN) and neural networks (NN). The results demonstrate that local features outperform equivalent holistic and histogram based features; optimal performance is observed using all image features except for textures; and that GPR outperforms linear, KNN and NN regression.
机译:现有的人群计数算法依赖于基于整体,局部或直方图的特征来捕获人群属性。然后使用回归来估计人群规模。跨多个数据集的测试不足,使得难以比较和对比不同的方法。本文提出了对多个数据集的评估,以比较基于整体,局部和直方图的方法,并比较各种图像特征和回归模型。遵循K折交叉验证协议,以评估五个公共数据集的性能:UCSD,PETS 2009,复旦,购物中心和大中央数据集。图像特征分为五种类型:大小,形状,边缘,关键点和纹理。评估的回归模型为:高斯过程回归(GPR),线性回归,K最近邻(KNN)和神经网络(NN)。结果表明,局部特征优于等效的基于整体和直方图的特征;使用除纹理之外的所有图像功能都可以观察到最佳性能;而且GPR优于线性回归,KNN和NN回归。

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