Crowded Video Individual Counting Informed by Social Grouping and Spatial-Temporal Displacement Priors
Hao Lu, Xuhui Zhu, Wenjing Zhang, Yanan Li, Xiang Bai

TL;DR
This paper introduces a new approach and dataset for Video Individual Counting (VIC) in crowded scenes, leveraging social grouping and spatial-temporal priors to improve accuracy over existing methods.
Contribution
It proposes a novel VIC baseline, OMAN++, that incorporates social grouping and displacement priors, and introduces WuhanMetroCrowd, a challenging new dataset for crowded pedestrian flow analysis.
Findings
OMAN++ outperforms state-of-the-art VIC methods on multiple benchmarks.
38.12% error reduction achieved on WuhanMetroCrowd dataset.
Enhanced performance in highly congested scenes.
Abstract
Video Individual Counting (VIC) is a recently introduced task aiming to estimate pedestrian flux from a video. It extends Video Crowd Counting (VCC) beyond the per-frame pedestrian count. In contrast to VCC that learns to count pedestrians across frames, VIC must identify co-existent pedestrians between frames, which turns out to be a correspondence problem. Existing VIC approaches, however, can underperform in congested scenes such as metro commuting. To address this, we build WuhanMetroCrowd, one of the first VIC datasets that characterize crowded, dynamic pedestrian flows. It features sparse-to-dense density levels, short-to-long video clips, slow-to-fast flow variations, front-to-back appearance changes, and light-to-heavy occlusions. To better adapt VIC approaches to crowds, we rethink the nature of VIC and recognize two informative priors: i) the social grouping prior that…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
