Poster
Multi-modal Crowd Counting via a Broker Modality
Haoliang Meng · Xiaopeng Hong · Chenhao Wang · Miao Shang · Wangmeng Zuo
# 127
Strong Double Blind |
Multi-modal crowd counting involves estimating crowd density from both visual and thermal/depth images. This task is challenging due to the significant gap between these distinct modalities. In this paper, we propose a novel approach by introducing an auxiliary broker modality and on this basis frame the task as a triple-modal learning problem. We devise a fusion-based method to generate this broker modality, leveraging a non-diffusion, lightweight counterpart of modern denoising diffusion-based fusion models. Additionally, we identify and address the ghosting effect caused by direct cross-modal image fusion in multi-modal crowd counting. Through extensive experimental evaluations on popular multi-modal crowd counting datasets, we demonstrate the effectiveness of our method, which introduces only 4 million additional parameters, yet achieves promising results. We will release the source code upon the acceptance of the paper.
Live content is unavailable. Log in and register to view live content