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Fine-grained Domain Adaptive Crowd Counting via Point-derived
  Segmentation

Fine-grained Domain Adaptive Crowd Counting via Point-derived Segmentation

6 August 2021
Yongtuo Liu
Dan Xu
Sucheng Ren
Han-Zhen Wu
Hongmin Cai
Shengfeng He
ArXivPDFHTML

Papers citing "Fine-grained Domain Adaptive Crowd Counting via Point-derived Segmentation"

6 / 6 papers shown
Title
Zero-shot Object Counting with Good Exemplars
Zero-shot Object Counting with Good Exemplars
Huilin Zhu
Jingling Yuan
Zhengwei Yang
Yu Guo
Zheng Wang
Xian Zhong
Shengfeng He
VLM
39
6
0
06 Jul 2024
DAOT: Domain-Agnostically Aligned Optimal Transport for Domain-Adaptive
  Crowd Counting
DAOT: Domain-Agnostically Aligned Optimal Transport for Domain-Adaptive Crowd Counting
Huilin Zhu
Jingling Yuan
Xian Zhong
Zhengwei Yang
Zheng Wang
Shengfeng He
OT
36
13
0
10 Aug 2023
Mapping Degeneration Meets Label Evolution: Learning Infrared Small
  Target Detection with Single Point Supervision
Mapping Degeneration Meets Label Evolution: Learning Infrared Small Target Detection with Single Point Supervision
Xinyi Ying
Li Liu
Yingqian Wang
Ruojing Li
Nuo Chen
Zaiping Lin
Weidong Sheng
Shilin Zhou
31
57
0
04 Apr 2023
Pointly-Supervised Panoptic Segmentation
Pointly-Supervised Panoptic Segmentation
Junsong Fan
Zhaoxiang Zhang
Tieniu Tan
35
23
0
25 Oct 2022
Cross-domain Object Detection through Coarse-to-Fine Feature Adaptation
Cross-domain Object Detection through Coarse-to-Fine Feature Adaptation
Yangtao Zheng
Di Huang
Songtao Liu
Yunhong Wang
ObjD
166
198
0
23 Mar 2020
Differential Treatment for Stuff and Things: A Simple Unsupervised
  Domain Adaptation Method for Semantic Segmentation
Differential Treatment for Stuff and Things: A Simple Unsupervised Domain Adaptation Method for Semantic Segmentation
Zhonghao Wang
Mo Yu
Yunchao Wei
Rogerio Feris
Jinjun Xiong
Wen-mei W. Hwu
Thomas S. Huang
Humphrey Shi
OOD
187
232
0
18 Mar 2020
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