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Article type: Research Article
Authors: Yu, Jiamaoa; b | Yu, Yinga; b; * | Qian, Jina; b | Han, Xinga; b | Zhu, Fenga; b | Zhu, Zhiliangb
Affiliations: [a] State Key Laboratory of Performance Monitoring and Protecting of Rail Transit Infrastructure, East China Jiaotong University, Jiangxi, China | [b] College of Software, East China Jiaotong University, Nanchang, China
Correspondence: [*] Corresponding author. Ying Yu, College of Software, East China Jiaotong University, China. E-mail: yuyingjx@163.com.
Abstract: Efficient feature representation is the key to improving crowd counting performance. CNN and Transformer are the two commonly used feature extraction frameworks in the field of crowd counting. CNN excels at hierarchically extracting local features to obtain a multi-scale feature representation of the image, but it struggles with capturing global features. Transformer, on the other hand, could capture global feature representation by utilizing cascaded self-attention to capture remote dependency relationships, but it often overlooks local detail information. Therefore, relying solely on CNN or Transformer for crowd counting has certain limitations. In this paper, we propose the TCHNet crowd counting model by combining the CNN and Transformer frameworks. The model employs the CMT (CNNs Meet Vision Transformers) backbone network as the Feature Extraction Module (FEM) to hierarchically extract local and global features of the crowd using a combination of convolution and self-attention mechanisms. To obtain more comprehensive spatial local information, an improved Progressive Multi-scale Learning Process (PMLP) is introduced into the FEM, guiding the network to learn at different granularity levels. The features from these three different granularity levels are then fed into the Multi-scale Feature Aggregation Module (MFAM) for fusion. Finally, a Multi-Scale Regression Module (MSRM) is designed to handle the multi-scale fused features, resulting in crowd features rich in high-level semantics and low-level detail. Experimental results on five benchmark datasets demonstrate that TCHNet achieves highly competitive performance compared to some popular crowd counting methods.
Keywords: Crowd counting, Transformer, CNN, multi-granularity, progressive learning
DOI: 10.3233/JIFS-236370
Journal: Journal of Intelligent & Fuzzy Systems, vol. 46, no. 4, pp. 10773-10785, 2024
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