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Auteurs principaux: Chen, Lei, Gao, Xinghang, Chao, Fei, Chang, Xiang, Lin, Chih Min, Gao, Xingen, Lin, Shaopeng, Zhang, Hongyi, Lin, Juqiang
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2404.07847
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author Chen, Lei
Gao, Xinghang
Chao, Fei
Chang, Xiang
Lin, Chih Min
Gao, Xingen
Lin, Shaopeng
Zhang, Hongyi
Lin, Juqiang
author_facet Chen, Lei
Gao, Xinghang
Chao, Fei
Chang, Xiang
Lin, Chih Min
Gao, Xingen
Lin, Shaopeng
Zhang, Hongyi
Lin, Juqiang
contents In the field of crowd counting research, many recent deep learning based methods have demonstrated robust capabilities for accurately estimating crowd sizes. However, the enhancement in their performance often arises from an increase in the complexity of the model structure. This paper discusses how to construct high-performance crowd counting models using only simple structures. We proposes the Fuss-Free Network (FFNet) that is characterized by its simple and efficieny structure, consisting of only a backbone network and a multi-scale feature fusion structure. The multi-scale feature fusion structure is a simple structure consisting of three branches, each only equipped with a focus transition module, and combines the features from these branches through the concatenation operation. Our proposed crowd counting model is trained and evaluated on four widely used public datasets, and it achieves accuracy that is comparable to that of existing complex models. Furthermore, we conduct a comprehensive evaluation by replacing the existing backbones of various models such as FFNet and CCTrans with different networks, including MobileNet-v3, ConvNeXt-Tiny, and Swin-Transformer-Small. The experimental results further indicate that excellent crowd counting performance can be achieved with the simplied structure proposed by us.
format Preprint
id arxiv_https___arxiv_org_abs_2404_07847
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The Effectiveness of a Simplified Model Structure for Crowd Counting
Chen, Lei
Gao, Xinghang
Chao, Fei
Chang, Xiang
Lin, Chih Min
Gao, Xingen
Lin, Shaopeng
Zhang, Hongyi
Lin, Juqiang
Computer Vision and Pattern Recognition
In the field of crowd counting research, many recent deep learning based methods have demonstrated robust capabilities for accurately estimating crowd sizes. However, the enhancement in their performance often arises from an increase in the complexity of the model structure. This paper discusses how to construct high-performance crowd counting models using only simple structures. We proposes the Fuss-Free Network (FFNet) that is characterized by its simple and efficieny structure, consisting of only a backbone network and a multi-scale feature fusion structure. The multi-scale feature fusion structure is a simple structure consisting of three branches, each only equipped with a focus transition module, and combines the features from these branches through the concatenation operation. Our proposed crowd counting model is trained and evaluated on four widely used public datasets, and it achieves accuracy that is comparable to that of existing complex models. Furthermore, we conduct a comprehensive evaluation by replacing the existing backbones of various models such as FFNet and CCTrans with different networks, including MobileNet-v3, ConvNeXt-Tiny, and Swin-Transformer-Small. The experimental results further indicate that excellent crowd counting performance can be achieved with the simplied structure proposed by us.
title The Effectiveness of a Simplified Model Structure for Crowd Counting
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.07847