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Adaptive NMS: Refining Pedestrian Detection in a Crowd

About

Pedestrian detection in a crowd is a very challenging issue. This paper addresses this problem by a novel Non-Maximum Suppression (NMS) algorithm to better refine the bounding boxes given by detectors. The contributions are threefold: (1) we propose adaptive-NMS, which applies a dynamic suppression threshold to an instance, according to the target density; (2) we design an efficient subnetwork to learn density scores, which can be conveniently embedded into both the single-stage and two-stage detectors; and (3) we achieve state of the art results on the CityPersons and CrowdHuman benchmarks.

Songtao Liu, Di Huang, Yunhong Wang• 2019

Related benchmarks

TaskDatasetResultRank
Pedestrian DetectionCityPersons (val)
AP (Reasonable)12
85
Pedestrian DetectionCrowdHuman (val)
MR^-249.7
61
Object DetectionCrowdHuman (val)
AP84.7
52
Pedestrian DetectionCityPersons 1.0 (val)
Miss Rate (Reasonable)11.9
21
Pedestrian DetectionCrowdHuman (test)
MR49.7
16
Pedestrian DetectionCityPersons highly occluded (HO)
Miss Rate56.4
16
Pedestrian DetectionCityPersons (val)
MR-2 (Reasonable)10.8
10
Object DetectionCrowdHuman full-body annotations (val)
Recall91.27
10
Pedestrian DetectionCityPersons reasonable (R)
Miss Rate12.9
9
Pedestrian DetectionCityPersons Reasonable
Miss Rate11.9
9
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