AI RESEARCH

A Benchmark for Semi-supervised Multi-modal Crowd Counting

arXiv CS.CV

ArXi:2606.03646v1 Announce Type: new This paper constructs the first benchmark on semi-supervised multi-modal crowd counting. To lay the foundation for this unexplored task, we first formulate the semi-supervised multi-modal setting and a standardized protocol that specifies the labeled-unlabeled data partition across different labeled ratios. Next, to establish solid reference points, we carefully tailor a diverse set of representative baselines, including existing fully supervised multi-modal methods and semi-supervised single-modal methods.