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Signal-to-Noise Ratio: A Robust Distance Metric for Deep Metric Learning

Signal-to-Noise Ratio: A Robust Distance Metric for Deep Metric Learning

4 April 2019
Tongtong Yuan
Weihong Deng
Jian Tang
Yinan Tang
Binghui Chen
ArXivPDFHTML

Papers citing "Signal-to-Noise Ratio: A Robust Distance Metric for Deep Metric Learning"

10 / 10 papers shown
Title
Potential Field Based Deep Metric Learning
Potential Field Based Deep Metric Learning
Shubhang Bhatnagar
Narendra Ahuja
51
1
0
28 May 2024
Intra-class Adaptive Augmentation with Neighbor Correction for Deep
  Metric Learning
Intra-class Adaptive Augmentation with Neighbor Correction for Deep Metric Learning
Zheren Fu
Zhendong Mao
Bo Hu
An-an Liu
Yongdong Zhang
23
5
0
29 Nov 2022
Denoising Multi-Similarity Formulation: A Self-paced Curriculum-Driven
  Approach for Robust Metric Learning
Denoising Multi-Similarity Formulation: A Self-paced Curriculum-Driven Approach for Robust Metric Learning
Chenkang Zhang
Lei Luo
Bin Gu
30
4
0
19 Nov 2022
Attributable Visual Similarity Learning
Attributable Visual Similarity Learning
Borui Zhang
Wenzhao Zheng
Jie Zhou
Jiwen Lu
22
17
0
28 Mar 2022
Construct Informative Triplet with Two-stage Hard-sample Generation
Construct Informative Triplet with Two-stage Hard-sample Generation
Chuang Zhu
Zheng Hu
Huihui Dong
Gang He
Zekuan Yu
Shangshang Zhang
36
3
0
04 Dec 2021
NORESQA: A Framework for Speech Quality Assessment using Non-Matching
  References
NORESQA: A Framework for Speech Quality Assessment using Non-Matching References
Pranay Manocha
Buye Xu
Anurag Kumar
32
44
0
16 Sep 2021
von Mises-Fisher Loss: An Exploration of Embedding Geometries for
  Supervised Learning
von Mises-Fisher Loss: An Exploration of Embedding Geometries for Supervised Learning
Tyler R. Scott
Andrew C. Gallagher
Michael C. Mozer
25
39
0
29 Mar 2021
Bayesian Triplet Loss: Uncertainty Quantification in Image Retrieval
Bayesian Triplet Loss: Uncertainty Quantification in Image Retrieval
Frederik Warburg
Martin Jørgensen
Javier Civera
Søren Hauberg
UQCV
27
36
0
25 Nov 2020
A Metric Learning Reality Check
A Metric Learning Reality Check
Kevin Musgrave
Serge J. Belongie
Ser-Nam Lim
59
475
0
18 Mar 2020
Hybrid-Attention based Decoupled Metric Learning for Zero-Shot Image
  Retrieval
Hybrid-Attention based Decoupled Metric Learning for Zero-Shot Image Retrieval
Binghui Chen
Weihong Deng
VLM
FedML
24
55
0
27 Jul 2019
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