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Papers/CrowdHuman: A Benchmark for Detecting Human in a Crowd

CrowdHuman: A Benchmark for Detecting Human in a Crowd

Shuai Shao, Zijian Zhao, Boxun Li, Tete Xiao, Gang Yu, Xiangyu Zhang, Jian Sun

2018-04-30Human DetectionPedestrian DetectionObject Detection
PaperPDFCode

Abstract

Human detection has witnessed impressive progress in recent years. However, the occlusion issue of detecting human in highly crowded environments is far from solved. To make matters worse, crowd scenarios are still under-represented in current human detection benchmarks. In this paper, we introduce a new dataset, called CrowdHuman, to better evaluate detectors in crowd scenarios. The CrowdHuman dataset is large, rich-annotated and contains high diversity. There are a total of $470K$ human instances from the train and validation subsets, and $~22.6$ persons per image, with various kinds of occlusions in the dataset. Each human instance is annotated with a head bounding-box, human visible-region bounding-box and human full-body bounding-box. Baseline performance of state-of-the-art detection frameworks on CrowdHuman is presented. The cross-dataset generalization results of CrowdHuman dataset demonstrate state-of-the-art performance on previous dataset including Caltech-USA, CityPersons, and Brainwash without bells and whistles. We hope our dataset will serve as a solid baseline and help promote future research in human detection tasks.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesCaltechReasonable Miss Rate3.46FRCNN+FPN-Res50+refined feature map+Crowdhuman
Autonomous VehiclesCityPersonsReasonable MR^-210.67FRCNN+FPN-Res50+refined feature map+Crowdhuman
Object DetectionCrowdHuman (full body)AP84.95Faster RCNN (ResNet50)
Object DetectionCrowdHuman (full body)mMR50.49Faster RCNN (ResNet50)
3DCrowdHuman (full body)AP84.95Faster RCNN (ResNet50)
3DCrowdHuman (full body)mMR50.49Faster RCNN (ResNet50)
2D ClassificationCrowdHuman (full body)AP84.95Faster RCNN (ResNet50)
2D ClassificationCrowdHuman (full body)mMR50.49Faster RCNN (ResNet50)
Pedestrian DetectionCaltechReasonable Miss Rate3.46FRCNN+FPN-Res50+refined feature map+Crowdhuman
Pedestrian DetectionCityPersonsReasonable MR^-210.67FRCNN+FPN-Res50+refined feature map+Crowdhuman
2D Object DetectionCrowdHuman (full body)AP84.95Faster RCNN (ResNet50)
2D Object DetectionCrowdHuman (full body)mMR50.49Faster RCNN (ResNet50)
16kCrowdHuman (full body)AP84.95Faster RCNN (ResNet50)
16kCrowdHuman (full body)mMR50.49Faster RCNN (ResNet50)

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