JOURNAL ARTICLE

Coarse to Fine: Domain Adaptive Crowd Counting via Adversarial Scoring Network

Abstract

Recent deep networks have convincingly demonstrated high capability in crowd counting, which is a critical task attracting widespread attention due to its various industrial applications. Despite such progress, trained data-dependent models usually can not generalize well to unseen scenarios because of the inherent domain shift. To facilitate this issue, this paper proposes a novel adversarial scoring network (ASNet) to gradually bridge the gap across domains from coarse to fine granularity. In specific, at the coarse-grained stage, we design a dual-discriminator strategy to adapt source domain to be close to the targets from the perspectives of both global and local feature space via adversarial learning. The distributions between two domains can thus be aligned roughly. At the fine-grained stage, we explore the transferability of source characteristics by scoring how similar the source samples are to target ones from multiple levels based on generative probability derived from coarse stage. Guided by these hierarchical scores, the transferable source features are properly selected to enhance the knowledge transfer during the adaptation process. With the coarse-to-fine design, the generalization bottleneck induced from the domain discrepancy can be effectively alleviated. Three sets of migration experiments show that the proposed methods achieve state-of-the-art counting performance compared with major unsupervised methods. © 2021 ACM.

Keywords:
Computer science Discriminator Artificial intelligence Adversarial system Domain (mathematical analysis) Benchmark (surveying) Bottleneck Machine learning Generalization Categorization Process (computing) Feature (linguistics) Granularity Task (project management)

Metrics

34
Cited By
2.76
FWCI (Field Weighted Citation Impact)
40
Refs
0.92
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Video Surveillance and Tracking Methods
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Anomaly Detection Techniques and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Fire Detection and Safety Systems
Physical Sciences →  Engineering →  Safety, Risk, Reliability and Quality

Related Documents

JOURNAL ARTICLE

Coarse-to-Fine Network for Crowd Counting

Zhiyuan Sun

Journal:   2022 IEEE International Conference on Electrical Engineering, Big Data and Algorithms (EEBDA) Year: 2022 Vol: 23 Pages: 1342-1346
JOURNAL ARTICLE

Adversarial scale-adaptive neural network for crowd counting

Xinyue ChenHua YanTong LiJialang XuFushun Zhu

Journal:   Neurocomputing Year: 2021 Vol: 450 Pages: 14-24
JOURNAL ARTICLE

Domain adaptive crowd counting via dynamic scale aggregation network

Zhanqiang HuoYanan WangYingxu QiaoJing WangFen Luo

Journal:   IET Computer Vision Year: 2023 Vol: 17 (7)Pages: 814-828
JOURNAL ARTICLE

Synthetic guided domain adaptive and edge aware network for crowd counting

Zhijie CaoPourya ShamsolmoaliJie Yang

Journal:   Image and Vision Computing Year: 2020 Vol: 104 Pages: 104026-104026
© 2026 ScienceGate Book Chapters — All rights reserved.