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The Herbarium Challenge 2019 Dataset

The Herbarium Challenge 2019 Dataset

12 June 2019
Kiat Chuan Tan
Yulong Liu
B. Ambrose
Melissa C. Tulig
Serge J. Belongie
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Papers citing "The Herbarium Challenge 2019 Dataset"

19 / 19 papers shown
Title
ProtoGCD: Unified and Unbiased Prototype Learning for Generalized Category Discovery
ProtoGCD: Unified and Unbiased Prototype Learning for Generalized Category Discovery
Shijie Ma
Fei Zhu
Xu-Yao Zhang
Cheng-Lin Liu
42
1
0
02 Apr 2025
AdaptGCD: Multi-Expert Adapter Tuning for Generalized Category Discovery
AdaptGCD: Multi-Expert Adapter Tuning for Generalized Category Discovery
Yuxun Qu
Yongqiang Tang
Chenyang Zhang
Wensheng Zhang
31
0
0
29 Oct 2024
Composing Novel Classes: A Concept-Driven Approach to Generalized Category Discovery
Composing Novel Classes: A Concept-Driven Approach to Generalized Category Discovery
Chuyu Zhang
Peiyan Gu
Xueyang Yu
Xuming He
32
0
0
17 Oct 2024
Contrastive Mean-Shift Learning for Generalized Category Discovery
Contrastive Mean-Shift Learning for Generalized Category Discovery
Sua Choi
Dahyun Kang
Minsu Cho
29
10
0
15 Apr 2024
GET: Unlocking the Multi-modal Potential of CLIP for Generalized Category Discovery
GET: Unlocking the Multi-modal Potential of CLIP for Generalized Category Discovery
Enguang Wang
Zhimao Peng
Zhengyuan Xie
Fei Yang
Xialei Liu
Ming-Ming Cheng
62
3
0
15 Mar 2024
No Representation Rules Them All in Category Discovery
No Representation Rules Them All in Category Discovery
S. Vaze
Andrea Vedaldi
Andrew Zisserman
OOD
39
31
0
28 Nov 2023
Learn to Categorize or Categorize to Learn? Self-Coding for Generalized
  Category Discovery
Learn to Categorize or Categorize to Learn? Self-Coding for Generalized Category Discovery
Sarah Rastegar
Hazel Doughty
Cees G. M. Snoek
40
16
0
30 Oct 2023
Novel Class Discovery for Long-tailed Recognition
Novel Class Discovery for Long-tailed Recognition
Zhang Chuyu
Rui Xu
Xuming He
35
16
0
06 Aug 2023
CiPR: An Efficient Framework with Cross-instance Positive Relations for
  Generalized Category Discovery
CiPR: An Efficient Framework with Cross-instance Positive Relations for Generalized Category Discovery
Shaozhe Hao
Kai Han
Kwan-Yee K. Wong
48
16
0
14 Apr 2023
Large-scale Pre-trained Models are Surprisingly Strong in Incremental
  Novel Class Discovery
Large-scale Pre-trained Models are Surprisingly Strong in Incremental Novel Class Discovery
Mingxuan Liu
Subhankar Roy
Zhun Zhong
N. Sebe
Elisa Ricci
CLL
SSL
41
10
0
28 Mar 2023
Parametric Classification for Generalized Category Discovery: A Baseline
  Study
Parametric Classification for Generalized Category Discovery: A Baseline Study
Xin Wen
Bingchen Zhao
Xiaojuan Qi
38
67
0
21 Nov 2022
OpenCon: Open-world Contrastive Learning
OpenCon: Open-world Contrastive Learning
Yiyou Sun
Yixuan Li
VLM
SSL
DRL
59
39
0
04 Aug 2022
The Power of Transfer Learning in Agricultural Applications: AgriNet
The Power of Transfer Learning in Agricultural Applications: AgriNet
Zahraa Al Sahili
M. Awad
23
18
0
08 Jul 2022
OpenLDN: Learning to Discover Novel Classes for Open-World
  Semi-Supervised Learning
OpenLDN: Learning to Discover Novel Classes for Open-World Semi-Supervised Learning
Mamshad Nayeem Rizve
Navid Kardan
Salman Khan
Fahad Shahbaz Khan
M. Shah
44
50
0
05 Jul 2022
Generalized Category Discovery
Generalized Category Discovery
S. Vaze
Kai Han
Andrea Vedaldi
Andrew Zisserman
40
188
0
07 Jan 2022
Domain Adaptation and Active Learning for Fine-Grained Recognition in
  the Field of Biodiversity
Domain Adaptation and Active Learning for Fine-Grained Recognition in the Field of Biodiversity
Bernd Gruner
Matthias Körschens
Björn Barz
Joachim Denzler
22
0
0
22 Oct 2021
PASS: An ImageNet replacement for self-supervised pretraining without
  humans
PASS: An ImageNet replacement for self-supervised pretraining without humans
Yuki M. Asano
Christian Rupprecht
Andrew Zisserman
Andrea Vedaldi
VLM
SSL
26
57
0
27 Sep 2021
Species Distribution Modeling for Machine Learning Practitioners: A
  Review
Species Distribution Modeling for Machine Learning Practitioners: A Review
Sara Beery
Elijah Cole
Joseph Parker
Pietro Perona
Kevin Winner
24
69
0
03 Jul 2021
Fixing the train-test resolution discrepancy
Fixing the train-test resolution discrepancy
Hugo Touvron
Andrea Vedaldi
Matthijs Douze
Hervé Jégou
52
421
0
14 Jun 2019
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