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Rethinking Global Context in Crowd Counting
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作者 Guolei Sun Yun Liu +3 位作者 Thomas Probst Danda Pani Paudel Nikola Popovic Luc Van Gool 《Machine Intelligence Research》 EI CSCD 2024年第4期640-651,共12页
This paper investigates the role of global context for crowd counting.Specifically,a pure transformer is used to extract features with global information from overlapping image patches.Inspired by classification,we ad... This paper investigates the role of global context for crowd counting.Specifically,a pure transformer is used to extract features with global information from overlapping image patches.Inspired by classification,we add a context token to the input sequence,to facilitate information exchange with tokens corresponding to image patches throughout transformer layers.Due to the fact that transformers do not explicitly model the tried-and-true channel-wise interactions,we propose a token-attention module(TAM)to recalibrate encoded features through channel-wise attention informed by the context token.Beyond that,it is adopted to predict the total person count of the image through regression-token module(RTM).Extensive experiments on various datasets,including ShanghaiTech,UCFQNRF,JHU-CROWD++and NWPU,demonstrate that the proposed context extraction techniques can significantly improve the performanceover the baselines. 展开更多
关键词 Crowd counting vision transformer global context ATTENTION density map.
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