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Xialei Liu; Joost van de Weijer; Andrew D. Bagdanov

Abstract
We propose a novel crowd counting approach that leverages abundantly available unlabeled crowd imagery in a learning-to-rank framework. To induce a ranking of cropped images , we use the observation that any sub-image of a crowded scene image is guaranteed to contain the same number or fewer persons than the super-image. This allows us to address the problem of limited size of existing datasets for crowd counting. We collect two crowd scene datasets from Google using keyword searches and query-by-example image retrieval, respectively. We demonstrate how to efficiently learn from these unlabeled datasets by incorporating learning-to-rank in a multi-task network which simultaneously ranks images and estimates crowd density maps. Experiments on two of the most challenging crowd counting datasets show that our approach obtains state-of-the-art results.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| crowd-counting-on-shanghaitech-a | Liu et al. | MAE: 73.6 |
| crowd-counting-on-shanghaitech-b | Liu et al. | MAE: 13.7 |
| crowd-counting-on-ucf-cc-50 | Liu et al. | MAE: 337.6 |
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