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Understanding the impact of mistakes on background regions in crowd
  counting

Understanding the impact of mistakes on background regions in crowd counting

30 March 2020
Davide Modolo
Bing Shuai
Rahul Rama Varior
Joseph Tighe
ArXivPDFHTML

Papers citing "Understanding the impact of mistakes on background regions in crowd counting"

7 / 7 papers shown
Title
Regressor-Segmenter Mutual Prompt Learning for Crowd Counting
Regressor-Segmenter Mutual Prompt Learning for Crowd Counting
Mingyue Guo
Li Yuan
Zhaoyi Yan
Binghui Chen
Yaowei Wang
QiXiang Ye
25
4
0
04 Dec 2023
Training-free Object Counting with Prompts
Training-free Object Counting with Prompts
Zenglin Shi
Ying Sun
Mengmi Zhang
VLM
18
20
0
30 Jun 2023
Focus for Free in Density-Based Counting
Focus for Free in Density-Based Counting
Zenglin Shi
Pascal Mettes
Cees G. M. Snoek
3DPC
20
8
0
08 Jun 2023
HDNet: A Hierarchically Decoupled Network for Crowd Counting
HDNet: A Hierarchically Decoupled Network for Crowd Counting
Chenliang Gu
Changan Wang
Bin-Bin Gao
Jun Liu
Tianliang Zhang
14
0
0
12 Dec 2022
Counting with Adaptive Auxiliary Learning
Counting with Adaptive Auxiliary Learning
Y. Meng
J. Bridge
Meng Wei
Yitian Zhao
Yihong Qiao
Xiaoyun Yang
Xiaowei Huang
Yalin Zheng
16
4
0
08 Mar 2022
A Survey on Deep Learning-based Single Image Crowd Counting: Network
  Design, Loss Function and Supervisory Signal
A Survey on Deep Learning-based Single Image Crowd Counting: Network Design, Loss Function and Supervisory Signal
Haoyue Bai
Jiageng Mao
Shueng-Han Gary Chan
25
22
0
31 Dec 2020
Real-Time Single Image and Video Super-Resolution Using an Efficient
  Sub-Pixel Convolutional Neural Network
Real-Time Single Image and Video Super-Resolution Using an Efficient Sub-Pixel Convolutional Neural Network
Wenzhe Shi
Jose Caballero
Ferenc Huszár
J. Totz
Andrew P. Aitken
Rob Bishop
Daniel Rueckert
Zehan Wang
SupR
190
5,173
0
16 Sep 2016
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