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Crowd density estimation based on classification activation map and patch density level

机译:基于分类激活地图和贴片密度水平的人群密度估计

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摘要

The task of crowd counting and density map estimation is riddled with many challenges, such as occlusions, non-uniform density, intra-scene and inter-scene variations in scale and perspective. Due to the development of deep learning and large crowd datasets in recent years, most crowd counting methods have achieved notable success. This paper aims to solve crowd density estimation problem for both sparse and dense conditions. To this end, we make two contributions: (1) a network named Patch Scale Discriminant Regression Network (PSDR). Given an input crowd image, it divides the image into patches and sends image patches of different density levels into different regression networks to get the corresponding density maps. It combines all patch density maps to predict the entire density map as the output. (2) A person classification activation map (CAM) method. CAM provides person location information and guides the generation of the entire density map in the final stage. Experiment confirms that CAM allows PSDR to gain another round of performance boost. For instance, on the SmartCity dataset, we achieve (8.6–1.1) MAE and (11.6–1.4) MSE. Our method combining above two methods performs better than state-of-the-art methods.
机译:人群计数和密度图估计的任务被许多挑战串行,例如闭塞,非均匀密度,场景和场景间的规模和视角的场景变化。由于近年来深度学习和大型人群数据集的发展,大多数人群计数方法取得了显着的成功。本文旨在解决稀疏和密集条件的人群密度估算问题。为此,我们做出了两个贡献:(1)一个名为Patch Scale判别回归网络(PSDR)的网络。给定输入人群图像,它将图像划分为补丁,并将不同密度级别的图像斑块发送到不同的回归网络中以获取相应的密度映射。它结合了所有贴片密度图以将整个密度图预测为输出。 (2)人分类激活图(CAM)方法。 CAM提供人物位置信息,并指导在最终阶段中的整个密度图的产生。实验证实,CAM允许PSDR获得另一轮性能提升。例如,在SmartCity数据集上,我们实现(8.6-1.1)MAE和(11.6-1.4)MSE。我们的方法组合以上两种方法比最先进的方法更好地执行。

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