English

Exclusivity-Guided Mask Learning for Semi-Supervised Crowd Instance Segmentation and Counting

Computer Vision and Pattern Recognition 2026-03-18 v1

Abstract

Semi-supervised crowd analysis is a prominent area of research, as unlabeled data are typically abundant and inexpensive to obtain. However, traditional point-based annotations constrain performance because individual regions are inherently ambiguous, and consequently, learning fine-grained structural semantics from sparse anno tations remains an unresolved challenge. In this paper, we first propose an Exclusion-Constrained Dual-Prompt SAM (EDP-SAM), based on our Nearest Neighbor Exclusion Circle (NNEC) constraint, to generate mask supervision for current datasets. With the aim of segmenting individuals in dense scenes, we then propose Exclusivity-Guided Mask Learning (XMask), which enforces spatial separation through a discriminative mask objective. Gaussian smoothing and a differentiable center sampling strategy are utilized to improve feature continuity and training stability. Building on XMask, we present a semi-supervised crowd counting framework that uses instance mask priors as pseudo-labels, which contain richer shape information than traditional point cues. Extensive experiments on the ShanghaiTech A, UCF-QNRF, and JHU++ datasets (using 5%, 10%, and 40% labeled data) verify that our end-to-end model achieves state-of-the-art semi-supervised segmentation and counting performance, effectively bridging the gap between counting and instance segmentation within a unified framework.

Keywords

Cite

@article{arxiv.2603.16241,
  title  = {Exclusivity-Guided Mask Learning for Semi-Supervised Crowd Instance Segmentation and Counting},
  author = {Jiyang Huang and Hongru Cheng and Wei Lin and Jia Wan and Antoni B. Chan},
  journal= {arXiv preprint arXiv:2603.16241},
  year   = {2026}
}
R2 v1 2026-07-01T11:23:46.305Z