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Papers/CityPersons: A Diverse Dataset for Pedestrian Detection

CityPersons: A Diverse Dataset for Pedestrian Detection

Shanshan Zhang, Rodrigo Benenson, Bernt Schiele

2017-02-19CVPR 2017 7Pedestrian Detection
PaperPDFCodeCode

Abstract

Convnets have enabled significant progress in pedestrian detection recently, but there are still open questions regarding suitable architectures and training data. We revisit CNN design and point out key adaptations, enabling plain FasterRCNN to obtain state-of-the-art results on the Caltech dataset. To achieve further improvement from more and better data, we introduce CityPersons, a new set of person annotations on top of the Cityscapes dataset. The diversity of CityPersons allows us for the first time to train one single CNN model that generalizes well over multiple benchmarks. Moreover, with additional training with CityPersons, we obtain top results using FasterRCNN on Caltech, improving especially for more difficult cases (heavy occlusion and small scale) and providing higher localization quality.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesCaltechReasonable Miss Rate5.1Zhang et al. *
Autonomous VehiclesCaltechReasonable Miss Rate5.8Zhang et al.
Autonomous VehiclesCityPersonsLarge MR^-28FRCNN+Seg
Autonomous VehiclesCityPersonsMedium MR^-26.7FRCNN+Seg
Autonomous VehiclesCityPersonsReasonable MR^-214.8FRCNN+Seg
Autonomous VehiclesCityPersonsSmall MR^-222.6FRCNN+Seg
Autonomous VehiclesCityPersonsLarge MR^-27.9FRCNN
Autonomous VehiclesCityPersonsMedium MR^-27.2FRCNN
Autonomous VehiclesCityPersonsReasonable MR^-215.4FRCNN
Autonomous VehiclesCityPersonsSmall MR^-225.6FRCNN
Pedestrian DetectionCaltechReasonable Miss Rate5.1Zhang et al. *
Pedestrian DetectionCaltechReasonable Miss Rate5.8Zhang et al.
Pedestrian DetectionCityPersonsLarge MR^-28FRCNN+Seg
Pedestrian DetectionCityPersonsMedium MR^-26.7FRCNN+Seg
Pedestrian DetectionCityPersonsReasonable MR^-214.8FRCNN+Seg
Pedestrian DetectionCityPersonsSmall MR^-222.6FRCNN+Seg
Pedestrian DetectionCityPersonsLarge MR^-27.9FRCNN
Pedestrian DetectionCityPersonsMedium MR^-27.2FRCNN
Pedestrian DetectionCityPersonsReasonable MR^-215.4FRCNN
Pedestrian DetectionCityPersonsSmall MR^-225.6FRCNN

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