The Effectiveness of a Simplified Model Structure for Crowd Counting | IEEE Journals & Magazine | IEEE Xplore

The Effectiveness of a Simplified Model Structure for Crowd Counting


Abstract:

Crowd counting, a method for measuring crowd sizes, has seen significant advancements with deep learning techniques, which have proven highly effective in accurate estima...Show More

Abstract:

Crowd counting, a method for measuring crowd sizes, has seen significant advancements with deep learning techniques, which have proven highly effective in accurate estimation. However, the improvement in these methods’ accuracy is frequently achieved at the cost of more intricate model architectures. This article discusses how to construct high-performance crowd counting models using only simple structures. We propose the fuss-free structure, a simple and efficient architecture with a backbone network and multiscale feature fusion. It exhibits notable adaptability, ensuring that slight replacing its components do not lead to a substantial decline in performance. The multiscale feature fusion structure is an uncomplicated design that consists of three distinct pathways, each featuring only a focus transition module (FTM). It combines the features from these pathways by directly employing the concatenation operation. By selecting appropriate components, our proposed structure has been trained and evaluated across four public datasets, demonstrating an accuracy that rivals that of existing complex models. Furthermore, a comprehensive evaluation is conducted by replacing the backbones of various models such as CCTrans and the proposed structure 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 simple structure proposed by us. Code is available at https://github.com/erdongsanshi/Fuss-Free-structure.
Article Sequence Number: 5023411
Date of Publication: 26 March 2025

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