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3D Random Occlusion and Multi-Layer Projection for Deep Multi-Camera Pedestrian Localization

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Although deep-learning based methods for monocular pedestrian detection have made great progress, they are still vulnerable to heavy occlusions. Using multi-view information fusion is a potential solution but has limited applications, due to the lack of annotated training samples in existing multi-view datasets, which increases the risk of overfitting. To address this problem, a data augmentation method is proposed to randomly generate 3D cylinder occlusions, on the ground plane, which are of the average size of pedestrians and projected to multiple views, to relieve the impact of overfitting in the training. Moreover, the feature map of each view is projected to multiple parallel planes at different heights, by using homographies, which allows the CNNs to fully utilize the features across the height of each pedestrian to infer the locations of pedestrians on the ground plane. The proposed 3DROM method has a greatly improved performance in comparison with the state-of-the-art deep-learning based methods for multi-view pedestrian detection.

Rui Qiu, Ming Xu, Yuyao Yan, Jeremy S. Smith, Xi Yang• 2022

Related benchmarks

TaskDatasetResultRank
Multiview Pedestrian DetectionWILDTRACK (test)
MODA93.5
46
Multiview Pedestrian DetectionMultiviewX (test)
MODA95
35
Pedestrian DetectionWildtrack
MODA91.2
21
Pedestrian DetectionMultiviewX
MODA90
21
Multi-View DetectionWildtrack
MODA93.5
12
Multi-view people detectionCVCS
MODA33.9
11
Multi-view people detectionMultiviewX
MODA95
10
Multi-view people detectionCityStreet
MODA60
5
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