IEICE Technical Committee Submission System
Conference Schedule
Online Proceedings
[Sign in]
Tech. Rep. Archives
    [Japanese] / [English] 
( Committee/Place/Topics  ) --Press->
 
( Paper Keywords:  /  Column:Title Auth. Affi. Abst. Keyword ) --Press->

All Technical Committee Conferences  (Searched in: All Years)

Search Results: Conference Papers
 Conference Papers (Available on Advance Programs)  (Sort by: Date Descending)
 Results 1 - 18 of 18  /   
Committee Date Time Place Paper Title / Authors Abstract Paper #
MSS, CAS, SIP, VLD 2023-07-06
14:40
Hokkaido
(Primary: On-site, Secondary: Online)
Convergence Acceleration of Particle-based Variational Inference by Deep Unfolding
Yuya Kawamura, Satoshi Takabe (Tokyo Tech) CAS2023-8 VLD2023-8 SIP2023-24 MSS2023-8
Stein Variational Gradient Descent(SVGD) is a prominent particle-based variational inference method used for estimating ... [more] CAS2023-8 VLD2023-8 SIP2023-24 MSS2023-8
pp.37-42
RCS, SIP, IT 2022-01-21
11:20
Online Online Deep-Unfolded Sparse Signal Recovery Algorithm using TopK Operator
Masanari Mizutani (NITech), Satoshi Takabe (TITech), Tadashi Wadayama (NITech) IT2021-72 SIP2021-80 RCS2021-240
Compressed sensing for estimating sparse signals is formulated as an NP-hard problem, where LASSO based on convex relax... [more] IT2021-72 SIP2021-80 RCS2021-240
pp.245-251
IT 2021-07-09
13:50
Online Online Projected gradient MIMO signal detection using Chebyshev step
Asahi Mizukoshi, Tadashi Wadayama, Satoshi Takabe (NITech) IT2021-25
This paper proposes a projected gradient detection method using the Chebyshev steps for a signal detector in a MIMO (Mul... [more] IT2021-25
pp.57-62
IT 2021-07-09
14:30
Online Online Construction of Dimension Reduction Matrix for Signal Recovery of Multivariate Gaussian Vectors
Kento Yokoyama, Tadashi Wadayama, Satoshi Takabe (NIT) IT2021-26
In compressed sensing, we discuss the problem of estimating the sparse original signal $¥bm{x} ¥in ¥mathbb{R}^n$ from th... [more] IT2021-26
pp.63-68
EMM, IT 2021-05-21
10:40
Online Online Proximal Decoding for LDPC-coded Massive MIMO Channels
Tadashi Wadayama, Satoshi Takabea (Nitech) IT2021-9 EMM2021-9
 [more] IT2021-9 EMM2021-9
pp.48-53
SIP, IT, RCS 2021-01-22
14:25
Online Online Accelerating Fixed-point Iteration with Deep Unfolded-Periodical Successive Over Relaxation
Yuan Qi, Wadayama Tadashi, Satoshi Takabe (NiTech) IT2020-106 SIP2020-84 RCS2020-197
 [more] IT2020-106 SIP2020-84 RCS2020-197
pp.241-246
IT 2020-09-04
10:05
Online Online A Study on Complex-valued Sparse CDMA Detection Using Deep Learning Technique
Yuki Yamauchi, Satoshi Takabe, Tadashi Wadayama (NITech) IT2020-20
 [more] IT2020-20
pp.13-18
IT 2020-09-04
10:45
Online Online Chebyshev Periodical SOR Methods for Accelerating Fixed-Point Iterations
Tadashi Wadayama, Satoshi Takabe (NiTech) IT2020-21
 [more] IT2020-21
pp.19-24
SIP 2020-08-27
13:30
Online Online [Invited Talk] Recent Advance of Deep-Unfolded Algorithms for Signal Processing and Wireless Communications
Satoshi Takabe (NITech) SIP2020-30
In this talk, I will briefly review recent progress of deep unfolding as a promising deep learning technique. A network ... [more] SIP2020-30
p.11
SIP 2020-08-28
10:55
Online Online Theoretical Analysis on Convergence Acceleration of Deep-Unfolded Gradient Descent
Satoshi Takabe, Tadashi Wadayama (NITech) SIP2020-35
Deep unfolding is a promising deep learning technique whose network architecture is based on existing iterative algorith... [more] SIP2020-35
pp.25-30
IT 2020-07-16
14:20
Online Online A Study on Trainable ISTA using Auto Encoder as Shrinkage Function for Image Recovery
Kento Yokoyama, Satoshi Takabe, Tadashi Wadayama (NIT) IT2020-13
ISTA (Iterative Shrinkage-Thresholding Algorithm) is one of the basic algorithms used in compressed sensing to estimate ... [more] IT2020-13
pp.13-18
SR, NS, SeMI, RCC, RCS
(Joint)
2020-07-08
13:50
Online Online Deep Unfolded Multicast Beamforming for Massive MIMO
Satoshi Takabe, Tadashi Wadayama (NITech) RCS2020-64
Multicast beamforming is a promising technique for multicast communications to design a beamforming vector based on chan... [more] RCS2020-64
pp.37-42
RCS, SR, SRW
(Joint)
2020-03-05
10:30
Tokyo Tokyo Institute of Technology
(Cancelled but technical report was issued)
[Invited Lecture] Recent Advance of Deep Unfolding-based Algorithms for Wireless Communications
Satoshi Takabe (NITech) SR2019-125
In this paper, we briefly review recent progress of deep unfolding that is a promising deep learning technique whose net... [more] SR2019-125
pp.71-78
IT 2019-07-26
10:55
Tokyo NATULUCK-Iidabashi-Higashiguchi Ekimaeten Complex-field TISTA for Nonlinear Inverse Problems
Satoshi Takabe, Tadashi Wadayama (NITech) IT2019-23
 [more] IT2019-23
pp.43-48
RCS, SIP, IT 2019-01-31
12:30
Osaka Osaka University Trainable ISTA -- Deep learning-based iterative algorithm for sparse signal recovery --
Satoshi Takabe, Tadashi Wadayama (NITech) IT2018-45 SIP2018-75 RCS2018-252
(To be available after the conference date) [more] IT2018-45 SIP2018-75 RCS2018-252
pp.61-66
IT, EMM 2018-05-17
14:00
Tokyo Ookayama Campus, Tokyo Institute of Technology Asymptotic Analysis of Spatially-Coupled LDPC Codes for Two-Way Relay Channels
Satoshi Takabe, Tadashi Wadayama (NITech), Masahito Hayashi (Nagoya Univ.) IT2018-1 EMM2018-1
Compute-and-forward relaying (CAF) is effective to increase bandwidth efficiency of wireless two-way relay channels. In ... [more] IT2018-1 EMM2018-1
pp.1-6
WBS, IT, ISEC 2018-03-09
11:40
Tokyo Katsusika Campas, Tokyo University of Science Asymptotic Analysis of LDPC Codes for Two-Way Relay Channels
Yuta Ishimatsu, Satoshi Takabe, Tadashi Wadayama (NITech), Masahito Hayashi (Nagoya Univ.) IT2017-131 ISEC2017-119 WBS2017-112
Compute-and-forward relaying is a relaying scheme to improve bandwidth efficiency of wireless two-way relay channels.
R... [more]
IT2017-131 ISEC2017-119 WBS2017-112
pp.167-172
IT 2017-07-13
15:45
Chiba Chiba University Phase Transition in Network Connectivity Robustness against Stochastic Node Removal
Satoshi Takabe, Takafumi Nakano, Tadashi Wadayama (NITech) IT2017-25
Recently, a reliability analysis on network connectivity against stochastic node removal is introduced by Nozaki et al. ... [more] IT2017-25
pp.49-54
 Results 1 - 18 of 18  /   
Choose a download format for default settings. [NEW !!]
Text format pLaTeX format CSV format BibTeX format
Copyright and reproduction : All rights are reserved and no part of this publication may be reproduced or transmitted in any form or by any means, electronic or mechanical, including photocopy, recording, or any information storage and retrieval system, without permission in writing from the publisher. Notwithstanding, instructors are permitted to photocopy isolated articles for noncommercial classroom use without fee. (License No.: 10GA0019/12GB0052/13GB0056/17GB0034/18GB0034)


[Return to Top Page]

[Return to IEICE Web Page]


The Institute of Electronics, Information and Communication Engineers (IEICE), Japan