Title of article
Crowd Counting Based on Multiresolution Density Map and Parallel Dilated Convolution
Author/Authors
Meijia Zhou,Jingfan Tang, School of Computer Science - Hangzhou Dianzi University, China , Li ,Pengfei School of Computer Science - Hangzhou Dianzi University, China , Zhang, Min School of Computer Science - Hangzhou Dianzi University, China , Jiang, Ming School of Computer Science - Hangzhou Dianzi University, China
Pages
10
From page
1
To page
10
Abstract
The current crowd counting tasks rely on a fully convolutional network to generate a density map that can achieve good performance. However, due to the crowd occlusion and perspective distortion in the image, the directly generated density map usually neglects the scale information and spatial contact information. To solve it, we proposed MDPDNet (Multiresolution Density maps and Parallel Dilated convolutions’ Network) to reduce the influence of occlusion and distortion on crowd estimation. This network is composed of two modules: (1) the parallel dilated convolution module (PDM) that combines three dilated convolutions in parallel to obtain the deep features on the larger receptive field with fewer parameters while reducing the loss of multiscale information; (2) the multiresolution density map module (MDM) that contains three-branch networks for extracting spatial contact information on three different low-resolution density maps as the feature input of the final crowd density map. Experiments show that MDPDNet achieved excellent results on three mainstream datasets (ShanghaiTech, UCF_CC_50, and UCF-QNRF).
Keywords
Crowd Counting , Multiresolution Density Map , Parallel Dilated Convolution
Journal title
Scientific Programming
Serial Year
2021
Full Text URL
Record number
2613690
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