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Understanding Deep Architectures using a Recursive Convolutional Network

Understanding Deep Architectures using a Recursive Convolutional Network

6 December 2013
David Eigen
J. Rolfe
Rob Fergus
Yann LeCun
    AI4CE
    FAtt
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Papers citing "Understanding Deep Architectures using a Recursive Convolutional Network"

26 / 26 papers shown
Title
Relaxed Recursive Transformers: Effective Parameter Sharing with Layer-wise LoRA
Relaxed Recursive Transformers: Effective Parameter Sharing with Layer-wise LoRA
Sangmin Bae
Adam Fisch
Hrayr Harutyunyan
Ziwei Ji
Seungyeon Kim
Tal Schuster
KELM
84
5
0
28 Oct 2024
Latent Iterative Refinement for Modular Source Separation
Latent Iterative Refinement for Modular Source Separation
Dimitrios Bralios
Efthymios Tzinis
G. Wichern
Paris Smaragdis
Jonathan Le Roux
BDL
33
5
0
22 Nov 2022
VSpSR: Explorable Super-Resolution via Variational Sparse Representation
VSpSR: Explorable Super-Resolution via Variational Sparse Representation
Hang Zhou
Chao Huang
Shangqi Gao
Xiahai Zhuang
38
6
0
17 Apr 2021
Multiscale Deep Equilibrium Models
Multiscale Deep Equilibrium Models
Shaojie Bai
V. Koltun
J. Zico Kolter
BDL
38
211
0
15 Jun 2020
An Overview of Neural Network Compression
An Overview of Neural Network Compression
James OÑeill
AI4CE
45
98
0
05 Jun 2020
Joint-SRVDNet: Joint Super Resolution and Vehicle Detection Network
Joint-SRVDNet: Joint Super Resolution and Vehicle Detection Network
Moktari Mostofa
Syeda Nyma Ferdous
B. Riggan
Nasser M. Nasrabadi
SupR
14
38
0
03 May 2020
Cross-X Learning for Fine-Grained Visual Categorization
Cross-X Learning for Fine-Grained Visual Categorization
W. Luo
Xitong Yang
Xianjie Mo
Yuheng Lu
L. Davis
Jun Li
Jian Yang
Ser-Nam Lim
85
193
0
10 Sep 2019
A Coarse-to-Fine Multi-stream Hybrid Deraining Network for Single Image
  Deraining
A Coarse-to-Fine Multi-stream Hybrid Deraining Network for Single Image Deraining
Yanyan Wei
Zhao Zhang
Haijun Zhang
Richang Hong
Meng Wang
19
35
0
28 Aug 2019
Multi-scale deep neural networks for real image super-resolution
Multi-scale deep neural networks for real image super-resolution
Yuxin Li
Xiahai Zhuang
SupR
27
33
0
24 Apr 2019
Spatially-Adaptive Filter Units for Compact and Efficient Deep Neural
  Networks
Spatially-Adaptive Filter Units for Compact and Efficient Deep Neural Networks
Domen Tabernik
Matej Kristan
A. Leonardis
16
22
0
20 Feb 2019
A Deeply-Recursive Convolutional Network for Crowd Counting
A Deeply-Recursive Convolutional Network for Crowd Counting
Xinghao Ding
Zhirui Lin
Fujin He
Yu Wang
Yue Huang
13
51
0
15 May 2018
Towards Principled Design of Deep Convolutional Networks: Introducing
  SimpNet
Towards Principled Design of Deep Convolutional Networks: Introducing SimpNet
S. H. HasanPour
Mohammad Rouhani
Mohsen Fayyaz
Mohammad Sabokrou
Ehsan Adeli
50
45
0
17 Feb 2018
Convolutional Neural Networks for Medical Image Analysis: Full Training
  or Fine Tuning?
Convolutional Neural Networks for Medical Image Analysis: Full Training or Fine Tuning?
Nima Tajbakhsh
Jae Y. Shin
S. Gurudu
R. T. Hurst
Christopher B. Kendall
Michael B. Gotway
Jianming Liang
23
2,497
0
02 Jun 2017
Deep Architectures for Modulation Recognition
Deep Architectures for Modulation Recognition
Nathan E. West
Tim O'Shea
21
401
0
27 Mar 2017
Aggregated Residual Transformations for Deep Neural Networks
Aggregated Residual Transformations for Deep Neural Networks
Saining Xie
Ross B. Girshick
Piotr Dollár
Z. Tu
Kaiming He
297
10,225
0
16 Nov 2016
Do semantic parts emerge in Convolutional Neural Networks?
Do semantic parts emerge in Convolutional Neural Networks?
Abel Gonzalez-Garcia
Davide Modolo
V. Ferrari
158
113
0
13 Jul 2016
Bridging the Gaps Between Residual Learning, Recurrent Neural Networks
  and Visual Cortex
Bridging the Gaps Between Residual Learning, Recurrent Neural Networks and Visual Cortex
Q. Liao
T. Poggio
213
255
0
13 Apr 2016
Do Deep Convolutional Nets Really Need to be Deep and Convolutional?
Do Deep Convolutional Nets Really Need to be Deep and Convolutional?
G. Urban
Krzysztof J. Geras
Samira Ebrahimi Kahou
Ozlem Aslan
Shengjie Wang
R. Caruana
Abdel-rahman Mohamed
Matthai Philipose
Matthew Richardson
20
47
0
17 Mar 2016
Representation of linguistic form and function in recurrent neural
  networks
Representation of linguistic form and function in recurrent neural networks
Ákos Kádár
Grzegorz Chrupała
A. Alishahi
27
162
0
29 Feb 2016
Deeply-Recursive Convolutional Network for Image Super-Resolution
Deeply-Recursive Convolutional Network for Image Super-Resolution
Jiwon Kim
Jung Kwon Lee
Kyoung Mu Lee
SupR
55
2,491
0
14 Nov 2015
Learning Contextual Dependencies with Convolutional Hierarchical
  Recurrent Neural Networks
Learning Contextual Dependencies with Convolutional Hierarchical Recurrent Neural Networks
Zhen Zuo
Bing Shuai
G. Wang
Xiao Liu
Xingxing Wang
B. Wang
16
93
0
13 Sep 2015
Delving Deep into Rectifiers: Surpassing Human-Level Performance on
  ImageNet Classification
Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification
Kaiming He
Xinming Zhang
Shaoqing Ren
Jian Sun
VLM
29
18,455
0
06 Feb 2015
Convolutional Neural Networks at Constrained Time Cost
Convolutional Neural Networks at Constrained Time Cost
Kaiming He
Jian Sun
3DV
27
1,288
0
04 Dec 2014
Learning Deep Structured Models
Learning Deep Structured Models
Liang-Chieh Chen
A. Schwing
Alan Yuille
R. Urtasun
BDL
37
247
0
09 Jul 2014
Do Deep Nets Really Need to be Deep?
Do Deep Nets Really Need to be Deep?
Lei Jimmy Ba
R. Caruana
85
2,107
0
21 Dec 2013
Improving neural networks by preventing co-adaptation of feature
  detectors
Improving neural networks by preventing co-adaptation of feature detectors
Geoffrey E. Hinton
Nitish Srivastava
A. Krizhevsky
Ilya Sutskever
Ruslan Salakhutdinov
VLM
266
7,638
0
03 Jul 2012
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