3.8 Proceedings Paper

Crowd Counting With Partial Annotations in an Image

Publisher

IEEE
DOI: 10.1109/ICCV48922.2021.01528

Keywords

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Funding

  1. National Key R&D Program of China [2018AAA0100704]
  2. NSFC [61932020]
  3. Science and Technology Commission of Shanghai Municipality [20ZR1436000]
  4. 'Shuguang Program' - Shanghai Education Development Foundation
  5. Shanghai Municipal Education Commission

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This paper studies a novel crowd counting setting by using only partial annotations in each image as training data. With a network consisting of three components, the model effectively tackles unannotated regions and achieves better performance on several datasets compared to recent methods and baselines.
To fully leverage the data captured from different scenes with different view angles while reducing the annotation cost, this paper studies a novel crowd counting setting, i.e. only using partial annotations in each image as training data. Inspired by the repetitive patterns in the annotated and unannotated regions as well as the ones between them, we design a network with three components to tackle those unannotated regions: i) in an Unannotated Regions Characterization (URC) module, we employ a memory bank to only store the annotated features, which could help the visual features extracted from these annotated regions flow to these unannotated regions; ii) For each image, Feature Distribution Consistency (FDC) regularizes the feature distributions of annotated head and unannotated head regions to be consistent; iii) a Cross-regressor Consistency Regularization (CCR) module is designed to learn the visual features of unannotated regions in a self-supervised style. The experimental results validate the effectiveness of our proposed model under the partial annotation setting for several datasets, such as ShanghaiTech, UCF-CC-50, UCFQNRF, NWPU-Crowd and JHU-CROWD++. With only 10% annotated regions in each image, our proposed model achieves better performance than the recent methods and baselines under semi-supervised or active learning settings on all datasets. The code is https://github.com/ svip-lab/CrwodCountingPAL.

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