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Too Far to See? Not Really! --- Pedestrian Detection with Scale-aware
  Localization Policy

Too Far to See? Not Really! --- Pedestrian Detection with Scale-aware Localization Policy

1 September 2017
Xiaowei Zhang
Li Cheng
Bo Li
Hai-Miao Hu
    ObjD
    ViT
ArXivPDFHTML

Papers citing "Too Far to See? Not Really! --- Pedestrian Detection with Scale-aware Localization Policy"

4 / 4 papers shown
Title
PSDiff: Diffusion Model for Person Search with Iterative and Collaborative Refinement
PSDiff: Diffusion Model for Person Search with Iterative and Collaborative Refinement
Chengyou Jia
Minnan Luo
Zhuohang Dang
Guangwen Dai
Xiao Chang
Yufei Guo
DiffM
67
1
0
31 Dec 2024
Pareto-Optimal Bit Allocation for Collaborative Intelligence
Pareto-Optimal Bit Allocation for Collaborative Intelligence
Saeed Ranjbar Alvar
Ivan V. Bajić
16
29
0
25 Sep 2020
The Adaptability and Challenges of Autonomous Vehicles to Pedestrians in
  Urban China
The Adaptability and Challenges of Autonomous Vehicles to Pedestrians in Urban China
Ke Min Wang
Gang Li
Junlan Chen
Yan Long
Tao Chen
Long Chen
Qin Xia
30
63
0
27 Jul 2020
Small-scale Pedestrian Detection Based on Somatic Topology Localization
  and Temporal Feature Aggregation
Small-scale Pedestrian Detection Based on Somatic Topology Localization and Temporal Feature Aggregation
Tao Song
Leiyu Sun
Di Xie
Haiming Sun
Shiliang Pu
24
54
0
04 Jul 2018
1