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Improving Point-based Crowd Counting and Localization Based on Auxiliary Point Guidance

About

Crowd counting and localization have become increasingly important in computer vision due to their wide-ranging applications. While point-based strategies have been widely used in crowd counting methods, they face a significant challenge, i.e., the lack of an effective learning strategy to guide the matching process. This deficiency leads to instability in matching point proposals to target points, adversely affecting overall performance. To address this issue, we introduce an effective approach to stabilize the proposal-target matching in point-based methods. We propose Auxiliary Point Guidance (APG) to provide clear and effective guidance for proposal selection and optimization, addressing the core issue of matching uncertainty. Additionally, we develop Implicit Feature Interpolation (IFI) to enable adaptive feature extraction in diverse crowd scenarios, further enhancing the model's robustness and accuracy. Extensive experiments demonstrate the effectiveness of our approach, showing significant improvements in crowd counting and localization performance, particularly under challenging conditions. The source codes and trained models will be made publicly available.

I-Hsiang Chen, Wei-Ting Chen, Yu-Wei Liu, Ming-Hsuan Yang, Sy-Yen Kuo• 2024

Related benchmarks

TaskDatasetResultRank
Crowd CountingShanghaiTech Part A (test)
MAE48.8
227
Crowd CountingUCF-QNRF (test)
MAE80
95
Crowd CountingUCF_CC_50
MAE154.8
60
Crowd CountingJHU-CROWD++ (test)
MAE54.3
39
Crowd CountingNWPU 49
MAE71.7
13
Crowd CountingSHHA 55 (test)
MAE48.8
13
Crowd CountingSHHB 55 (test)
MAE5.6
12
Crowd CountingUCF-QNRF 15 (test)
MAE80.1
12
Crowd CountingJHU-Crowd+ 44 (test)
MAE54.3
11
LocalizationNWPU-Crowd (test)
F1 (sigma_l)76.4
9
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