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行人检测 | Pedestrian Detection优秀论文整理

 知识分享家 2021-07-03

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论文整理

[CVPR-2019] Pedestrian Detection in Thermal Images using Saliency Maps

  • paper: https:///abs/1904.06859
[CVPR-2019] SSA-CNN: SemanticSelf-Attention CNN for Pedestrian Detection
  • paper: https:///abs/1902.09080v1
[CVPR-2019] High-level Semantic FeatureDetection:A New Perspective for Pedestrian Detection
  • paper:https:///abs/1904.02948

  • code:https://github.com/liuwei16/CSP
[CVPR-2018] Occluded Pedestrian DetectionThrough Guided Attention in CNNs
  • paper:http://openaccess.thecvf.com/content_cvpr_2018/papers/Zhang_Occluded_Pedestrian_Detection_CVPR_2018_paper.pdf

[CVPR-2018] Repulsion Loss: DetectingPedestrians in a Crowd

  • paper:http:///abs/1711.07752

  • code:https://github.com/rainofmine/Repulsion_Loss

[TIP-2018] Too Far to See? Not Really:-Pedestrian Detection with Scale-Aware Localization Policy
  • paper:https:///abs/1709.00235
[Transactions on Multimedia-2017] Scale-Aware Fast R-CNN for Pedestrian Detection
  • paper:https:///abs/1510.08160

[ECCV-2018] Bi-box Regression forPedestrian Detection and Occlusion Estimation

  • paper:http://openaccess./content_ECCV_2018/papers/CHUNLUAN_ZHOU_Bi-box_Regression_for_ECCV_2018_paper.pdf

[ECCV-2018] Learning Efficient Single-stagePedestrian Detectors by Asymptotic Localization Fitting
  • paper:http://openaccess./content_ECCV_2018/papers/Wei_Liu_Learning_Efficient_Single-stage_ECCV_2018_paper.pdf

[ECCV-2018] Graininess-Aware Deep FeatureLearning for Pedestrian Detection

  • paper:http://openaccess./content_ECCV_2018/papers/Chunze_Lin_Graininess-Aware_Deep_Feature_ECCV_2018_paper.pdf

[ECCV-2018] Occlusion-aware R-CNN:Detecting Pedestrians in a Crowd

  • paper: http:///abs/1807.08407

[ECCV-2018] Small-scale PedestrianDetection Based on Somatic Topology Localization and Temporal FeatureAggregation

  • paper:https:///abs/1807.01438
[CVPR-2018] Improving Occlusion and HardNegative Handling for Single-Stage Pedestrian Detectors
  • paper: http://vision./projects/partgridnet/data/noh_2018.pdf

  • project : http://vision./projects/partgridnet/
最后,祝大家炼丹愉快,科研顺利~~

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