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On the Importance of Distractors for Few-Shot Classification

On the Importance of Distractors for Few-Shot Classification

20 September 2021
Rajshekhar Das
Yu-xiong Wang
José M. F. Moura
ArXivPDFHTML

Papers citing "On the Importance of Distractors for Few-Shot Classification"

17 / 17 papers shown
Title
Adaptive Semantic Consistency for Cross-domain Few-shot Classification
Adaptive Semantic Consistency for Cross-domain Few-shot Classification
Hengchu Lu
Yuanjie Shao
Xiang Wang
Changxin Gao
12
1
0
01 Aug 2023
DiffKendall: A Novel Approach for Few-Shot Learning with Differentiable
  Kendall's Rank Correlation
DiffKendall: A Novel Approach for Few-Shot Learning with Differentiable Kendall's Rank Correlation
Kai Zheng
Huishuai Zhang
Weiran Huang
16
4
0
28 Jul 2023
Topic-Guided Sampling For Data-Efficient Multi-Domain Stance Detection
Topic-Guided Sampling For Data-Efficient Multi-Domain Stance Detection
Erik Arakelyan
Arnav Arora
Isabelle Augenstein
19
9
0
01 Jun 2023
MMG-Ego4D: Multi-Modal Generalization in Egocentric Action Recognition
MMG-Ego4D: Multi-Modal Generalization in Egocentric Action Recognition
Xinyu Gong
S. Mohan
Naina Dhingra
Jean-Charles Bazin
Yilei Li
Zhangyang Wang
Rakesh Ranjan
EgoV
54
17
0
12 May 2023
StyleAdv: Meta Style Adversarial Training for Cross-Domain Few-Shot
  Learning
StyleAdv: Meta Style Adversarial Training for Cross-Domain Few-Shot Learning
Yu Fu
Yu Xie
Yanwei Fu
Yugang Jiang
25
31
0
18 Feb 2023
TGDM: Target Guided Dynamic Mixup for Cross-Domain Few-Shot Learning
TGDM: Target Guided Dynamic Mixup for Cross-Domain Few-Shot Learning
Linhai Zhuo
Yu Fu
Jingjing Chen
Yixin Cao
Yu-Gang Jiang
57
15
0
11 Oct 2022
ME-D2N: Multi-Expert Domain Decompositional Network for Cross-Domain
  Few-Shot Learning
ME-D2N: Multi-Expert Domain Decompositional Network for Cross-Domain Few-Shot Learning
Yu Fu
Yu Xie
Yanwei Fu
Jingjing Chen
Yu-Gang Jiang
24
15
0
11 Oct 2022
Inductive and Transductive Few-Shot Video Classification via Appearance
  and Temporal Alignments
Inductive and Transductive Few-Shot Video Classification via Appearance and Temporal Alignments
Khoi Duc Minh Nguyen
Quoc-Huy Tran
Khoi Nguyen
Binh-Son Hua
Rang Nguyen
23
29
0
21 Jul 2022
Fine-grained Few-shot Recognition by Deep Object Parsing
Fine-grained Few-shot Recognition by Deep Object Parsing
Ruizhao Zhu
Pengkai Zhu
Samarth Mishra
Venkatesh Saligrama
22
0
0
14 Jul 2022
POODLE: Improving Few-shot Learning via Penalizing Out-of-Distribution
  Samples
POODLE: Improving Few-shot Learning via Penalizing Out-of-Distribution Samples
Duong H. Le
Khoi Duc Minh Nguyen
Khoi Nguyen
Quoc-Huy Tran
Rang Nguyen
Binh-Son Hua
OODD
30
39
0
08 Jun 2022
Wave-SAN: Wavelet based Style Augmentation Network for Cross-Domain
  Few-Shot Learning
Wave-SAN: Wavelet based Style Augmentation Network for Cross-Domain Few-Shot Learning
Yuqian Fu
Yu Xie
Yanwei Fu
Jingjing Chen
Yu-Gang Jiang
16
18
0
15 Mar 2022
Ranking Distance Calibration for Cross-Domain Few-Shot Learning
Ranking Distance Calibration for Cross-Domain Few-Shot Learning
Pan Li
S. Gong
Chengjie Wang
Yanwei Fu
24
32
0
01 Dec 2021
Meta-FDMixup: Cross-Domain Few-Shot Learning Guided by Labeled Target
  Data
Meta-FDMixup: Cross-Domain Few-Shot Learning Guided by Labeled Target Data
Yu Fu
Yanwei Fu
Yu-Gang Jiang
14
60
0
26 Jul 2021
CrossTransformers: spatially-aware few-shot transfer
CrossTransformers: spatially-aware few-shot transfer
Carl Doersch
Ankush Gupta
Andrew Zisserman
ViT
201
330
0
22 Jul 2020
Rapid Learning or Feature Reuse? Towards Understanding the Effectiveness
  of MAML
Rapid Learning or Feature Reuse? Towards Understanding the Effectiveness of MAML
Aniruddh Raghu
M. Raghu
Samy Bengio
Oriol Vinyals
177
639
0
19 Sep 2019
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks
Chelsea Finn
Pieter Abbeel
Sergey Levine
OOD
317
11,681
0
09 Mar 2017
Borrowing Treasures from the Wealthy: Deep Transfer Learning through
  Selective Joint Fine-tuning
Borrowing Treasures from the Wealthy: Deep Transfer Learning through Selective Joint Fine-tuning
Weifeng Ge
Yizhou Yu
91
233
0
28 Feb 2017
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