CVDec 18, 2025

Semi-Supervised Multi-View Crowd Counting by Ranking Multi-View Fusion Models

arXiv:2512.16243v12 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses data scarcity for researchers in crowd counting, but it is incremental as it builds on existing semi-supervised approaches.

The paper tackles the problem of limited labeled data in multi-view crowd counting by proposing two semi-supervised frameworks that rank multi-view fusion models based on predictions or uncertainties, showing advantages over other semi-supervised methods in experiments.

Multi-view crowd counting has been proposed to deal with the severe occlusion issue of crowd counting in large and wide scenes. However, due to the difficulty of collecting and annotating multi-view images, the datasets for multi-view counting have a limited number of multi-view frames and scenes. To solve the problem of limited data, one approach is to collect synthetic data to bypass the annotating step, while another is to propose semi- or weakly-supervised or unsupervised methods that demand less multi-view data. In this paper, we propose two semi-supervised multi-view crowd counting frameworks by ranking the multi-view fusion models of different numbers of input views, in terms of the model predictions or the model uncertainties. Specifically, for the first method (vanilla model), we rank the multi-view fusion models' prediction results of different numbers of camera-view inputs, namely, the model's predictions with fewer camera views shall not be larger than the predictions with more camera views. For the second method, we rank the estimated model uncertainties of the multi-view fusion models with a variable number of view inputs, guided by the multi-view fusion models' prediction errors, namely, the model uncertainties with more camera views shall not be larger than those with fewer camera views. These constraints are introduced into the model training in a semi-supervised fashion for multi-view counting with limited labeled data. The experiments demonstrate the advantages of the proposed multi-view model ranking methods compared with other semi-supervised counting methods.

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