FGA: Fourier-Guided Attention Network for Crowd Count Estimation
Yashwardhan Chaudhuri, Ankit Kumar, Arun Balaji Buduru, Adel, Alshamrani

TL;DR
This paper introduces Fourier-guided attention (FGA), a novel dual-path attention mechanism combining frequency domain and spatial features to improve crowd counting accuracy across multiple datasets.
Contribution
The paper proposes FGA, a dual-path attention module that integrates FFT-based global features with spatial attention, enhancing crowd count estimation in convolutional networks.
Findings
FGA improves crowd counting accuracy on benchmark datasets.
FGA demonstrates better global pattern capture via FFT and spatial attention.
Qualitative analysis shows FGA's effectiveness in pattern recognition.
Abstract
Crowd counting is gaining societal relevance, particularly in domains of Urban Planning, Crowd Management, and Public Safety. This paper introduces Fourier-guided attention (FGA), a novel attention mechanism for crowd count estimation designed to address the inefficient full-scale global pattern capture in existing works on convolution-based attention networks. FGA efficiently captures multi-scale information, including full-scale global patterns, by utilizing Fast-Fourier Transformations (FFT) along with spatial attention for global features and convolutions with channel-wise attention for semi-global and local features. The architecture of FGA involves a dual-path approach: (1) a path for processing full-scale global features through FFT, allowing for efficient extraction of information in the frequency domain, and (2) a path for processing remaining feature maps for semi-global and…
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Taxonomy
TopicsEvacuation and Crowd Dynamics · Video Surveillance and Tracking Methods · Anomaly Detection Techniques and Applications
MethodsSoftmax · Attention Is All You Need · Factor Graph Attention
