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Papers/Detection in Crowded Scenes: One Proposal, Multiple Predic...

Detection in Crowded Scenes: One Proposal, Multiple Predictions

Xuangeng Chu, Anlin Zheng, Xiangyu Zhang, Jian Sun

2020-03-20CVPR 2020 6Pedestrian DetectionObject Detection
PaperPDFCodeCodeCode(official)

Abstract

We propose a simple yet effective proposal-based object detector, aiming at detecting highly-overlapped instances in crowded scenes. The key of our approach is to let each proposal predict a set of correlated instances rather than a single one in previous proposal-based frameworks. Equipped with new techniques such as EMD Loss and Set NMS, our detector can effectively handle the difficulty of detecting highly overlapped objects. On a FPN-Res50 baseline, our detector can obtain 4.9\% AP gains on challenging CrowdHuman dataset and 1.0\% $\text{MR}^{-2}$ improvements on CityPersons dataset, without bells and whistles. Moreover, on less crowed datasets like COCO, our approach can still achieve moderate improvement, suggesting the proposed method is robust to crowdedness. Code and pre-trained models will be released at https://github.com/megvii-model/CrowdDetection.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesTJU-Ped-trafficALL (miss rate)36.94CrowdDet
Autonomous VehiclesTJU-Ped-trafficHO (miss rate)61.22CrowdDet
Autonomous VehiclesTJU-Ped-trafficR (miss rate)20.82CrowdDet
Autonomous VehiclesTJU-Ped-trafficR+HO (miss rate)25.28CrowdDet
Autonomous VehiclesTJU-Ped-campusALL (miss rate)35.9CrowdDet
Autonomous VehiclesTJU-Ped-campusHO (miss rate)66.38CrowdDet
Autonomous VehiclesTJU-Ped-campusR (miss rate)25.73CrowdDet
Autonomous VehiclesTJU-Ped-campusR+HO (miss rate)33.63CrowdDet
Object DetectionCrowdHuman (full body)AP90.7CrowdDet
Object DetectionCrowdHuman (full body)mMR41.4CrowdDet
3DCrowdHuman (full body)AP90.7CrowdDet
3DCrowdHuman (full body)mMR41.4CrowdDet
2D ClassificationCrowdHuman (full body)AP90.7CrowdDet
2D ClassificationCrowdHuman (full body)mMR41.4CrowdDet
Pedestrian DetectionTJU-Ped-trafficALL (miss rate)36.94CrowdDet
Pedestrian DetectionTJU-Ped-trafficHO (miss rate)61.22CrowdDet
Pedestrian DetectionTJU-Ped-trafficR (miss rate)20.82CrowdDet
Pedestrian DetectionTJU-Ped-trafficR+HO (miss rate)25.28CrowdDet
Pedestrian DetectionTJU-Ped-campusALL (miss rate)35.9CrowdDet
Pedestrian DetectionTJU-Ped-campusHO (miss rate)66.38CrowdDet
Pedestrian DetectionTJU-Ped-campusR (miss rate)25.73CrowdDet
Pedestrian DetectionTJU-Ped-campusR+HO (miss rate)33.63CrowdDet
2D Object DetectionCrowdHuman (full body)AP90.7CrowdDet
2D Object DetectionCrowdHuman (full body)mMR41.4CrowdDet
16kCrowdHuman (full body)AP90.7CrowdDet
16kCrowdHuman (full body)mMR41.4CrowdDet

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