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CEM-YOLO: multi-branch residual feature fusion and convolutional maxpooling downsampling for real-time vehicle detection in night scenarios — Li‐Juan Liu (2025) | RDL Network
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CEM-YOLO: multi-branch residual feature fusion and convolutional maxpooling downsampling for real-time vehicle detection in night scenarios
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Hamid Reza Karimi
Politecnico di Milano
CEM-YOLO: multi-branch residual feature fusion and convolutional maxpooling downsampling for real-time vehicle detection in night scenarios
Article
2025
en
Authors
LL
Li‐Juan Liu
RJ
RuShi Jia
Hamid Reza Karimi
Politecnico di Milano
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