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Global Context Instructive Network for Extreme Crowd Counting
2019
IEEE Access
Crowd counting has gained popularity due to wide applications, such as intelligent security, and urban planning. However, scale variation and perspective distortion make it a challenging task. Most existing works focus on multi-scale feature extraction to address the challenge of scale variation and perspective distortion. In this paper, we propose a novel Global Context Instructive Network (GCINet), which devotes to making full use of extracted features and obtaining precise counts. The main
doi:10.1109/access.2019.2962870
fatcat:2sif4uelrzhwfixk6wi3nbljr4