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Generating High-Quality Crowd Density Maps using Contextual Pyramid CNNs

机译:使用上下文金字塔CNNS产生高质量人群密度图

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We present a novel method called Contextual Pyramid CNN (CP-CNN) for generating high-quality crowd density and count estimation by explicitly incorporating global and local contextual information of crowd images. The proposed CP-CNN consists of four modules: Global Context Estimator (GCE), Local Context Estimator (LCE), Density Map Estimator (DME) and a Fusion-CNN (F-CNN). GCE is a VGG-16 based CNN that encodes global context and it is trained to classify input images into different density classes, whereas LCE is another CNN that encodes local context information and it is trained to perform patch-wise classification of input images into different density classes. DME is a multi-column architecture-based CNN that aims to generate high-dimensional feature maps from the input image which are fused with the contextual information estimated by GCE and LCE using F-CNN. To generate high resolution and high-quality density maps, F-CNN uses a set of convolutional and fractionally-strided convolutional layers and it is trained along with the DME in an end-to-end fashion using a combination of adversarial loss and pixel-level Euclidean loss. Extensive experiments on highly challenging datasets show that the proposed method achieves significant improvements over the state-of-the-art methods.
机译:我们提出了一种称为上下文金字塔CNN(CP-CNN)的新方法,用于通过明确结合人群图像的全局和本地上下文信息来产生高质量的人群密度和计数估计。所提出的CP-CNN由四个模块:全局上下文估计器(GCE),本地上下文估计器(LCE),密度图估计器(DME)和融合-CNN(F-CNN)组成。 GCE是基于VGG-16的CNN,用于对全局上下文进行编码,并且培训将输入图像分类为不同的密度类,而LCE是编码本地上下文信息的另一个CNN,并且训练以便对输入图像进行修补程序分类,以便对输入图像进行修补程序分类。密度类。 DME是基于多列体系结构的CNN,其旨在从输入图像生成高维特征映射,该输入图像与使用F-CNN估计的由GCE和LCE估计的上下文信息融合。为了产生高分辨率和高质量的密度图,F-CNN使用一组卷积和分级卷积的卷积层,并且使用对抗性丢失和像素的组合,将其与DME以端到端的方式培训。水平欧几里德损失。关于高度挑战性数据集的广泛实验表明,该方法通过最先进的方法实现了显着的改进。

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