Meng_Free_Lunch_Enhancements_for_Multi-modal_Crowd_Counting@CVPR2025@CVF

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#1 Free Lunch Enhancements for Multi-modal Crowd Counting [PDF] [Copy] [Kimi1] [REL]

Authors: Haoliang Meng, Xiaopeng Hong, Zhengqin Lai, Miao Shang

This paper addresses multi-modal crowd counting with a novel 'free lunch' training enhancement strategy that requires no additional data, parameters, or increased inference complexity. First, we introduce a cross-modal alignment technique as a plug-in post-processing step for the pre-trained backbone network, enhancing the model’s ability to capture shared information across modalities. Second, we incorporate a regional density supervision mechanism during the fine-tuning stage, which differentiates features in regions with varying crowd densities. Extensive experiments on three multi-modal crowd counting datasets validate our approach, making it the first to achieve an MAE below 10 on RGBT-CC.

Subject: CVPR.2025 - Poster