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 Conference Papers (Available on Advance Programs)  (Sort by: Date Descending)
 Results 1 - 13 of 13  /   
Committee Date Time Place Paper Title / Authors Abstract Paper #
RECONF 2022-06-08
15:50
Ibaraki CCS, Univ. of Tsukuba
(Primary: On-site, Secondary: Online)
Structural Sparsification of Activations and Weights for Low Latency Implementation of CNN
Akira Jinguji, Naoto Soga, Hiroki Nakahara (Tokyo Tech) RECONF2022-22
(To be available after the conference date) [more] RECONF2022-22
pp.95-100
RECONF, VLD, CPSY, IPSJ-ARC, IPSJ-SLDM [detail] 2022-01-24
15:55
Online Online Accelerating Deep Neural Networks on Edge Devices by Knowledge Distillation and Layer Pruning
Yuki Ichikawa, Akira Jinguji, Ryosuke Kuramochi, Hiroki Nakahara (Titech) VLD2021-58 CPSY2021-27 RECONF2021-66
A deep neural network (DNN) is computationally expensive, making it challenging to run DNN on edge devices. Therefore, m... [more] VLD2021-58 CPSY2021-27 RECONF2021-66
pp.49-54
RECONF, VLD, CPSY, IPSJ-ARC, IPSJ-SLDM [detail] 2022-01-24
16:20
Online Online Addition of DPU Training Function by Tail Layer Training
Yuki Takashima, Akira Jinguji, Hiroki Nakahara (Tokyo Tech) VLD2021-59 CPSY2021-28 RECONF2021-67
The demand for deep learning has been increasing, and many hardware implementations have been proposed. The Deep learnin... [more] VLD2021-59 CPSY2021-28 RECONF2021-67
pp.55-60
VLD, DC, RECONF, ICD, IPSJ-SLDM
(Joint) [detail]
2021-12-01
09:20
Online Online Block Sparse MLP-based Vision DNN Accelerators on Embedded FPGAs
Akira Jinguji, Hiroki Nakahara (Tokyo Tech) VLD2021-21 ICD2021-31 DC2021-27 RECONF2021-29
Since the advent of Vision Transformer, a deep learning model for image recognition without Convolution, MLP-based model... [more] VLD2021-21 ICD2021-31 DC2021-27 RECONF2021-29
pp.25-30
VLD, DC, RECONF, ICD, IPSJ-SLDM
(Joint) [detail]
2021-12-01
10:10
Online Online A Multilayer Perceptron Training Accelerator using Systolic Array
Takeshi Senoo, Akira Jinguji, Ryosuke Kuramochi, Hiroki Nakahara (Toyko Tech) VLD2021-23 ICD2021-33 DC2021-29 RECONF2021-31
Neural networks are being used in various applications, and the demand for fast training with large amounts of data is e... [more] VLD2021-23 ICD2021-33 DC2021-29 RECONF2021-31
pp.37-42
RECONF 2021-09-10
09:55
Online Online An FPGA Implementation of neural networks with multi-core structured using high level synthesis
Akira Jinguji, Hiroki Nakahara (Tokyo Tech) RECONF2021-18
(To be available after the conference date) [more] RECONF2021-18
pp.7-12
CPSY, RECONF, VLD, IPSJ-ARC, IPSJ-SLDM [detail] 2021-01-25
15:15
Online Online A High-speed Convolutional Neural Network Accelerator for an Adaptive Resolution on an FPGA
Koki Sayama, Akira Jinguji, Naoto Soga, Hiroki Nakahara (Tokyo Tech) VLD2020-49 CPSY2020-32 RECONF2020-68
In recent years, CNN has been used for various tasks in the field of computer vision and has achievedexcellent performan... [more] VLD2020-49 CPSY2020-32 RECONF2020-68
pp.58-62
VLD, DC, CPSY, RECONF, ICD, IE, IPSJ-SLDM, IPSJ-EMB, IPSJ-ARC
(Joint) [detail]
2019-11-14
09:40
Ehime Ehime Prefecture Gender Equality Center FPGA implementation of ISA-based sparse CNN using Wide-SIMD
Akira Jinguji, Shimpei Sato, Hiroki Nakahara (Titech) RECONF2019-37
Convolutional Neural Network (CNN) achieves high recognition performance in image recognition, and is expected to be app... [more] RECONF2019-37
pp.9-14
RECONF 2019-05-10
15:30
Tokyo Tokyo Tech Front Spatial-Separable Convolution: Low memory CNN for FPGA
Akira Jinguji, Masayuki Shimoda, Hiroki Nakahara (titech) RECONF2019-16
Object detection and image recognition using a Convolutional Neural Network (CNN) are used in em- bedded systems, which ... [more] RECONF2019-16
pp.85-90
HWS, VLD 2019-02-27
10:50
Okinawa Okinawa Ken Seinen Kaikan Spatial-Separable Convolution: Low memory CNN for FPGA
Akira Jinguji, Masayuki Shimoda, Hiroki Nakahara (titech) VLD2018-94 HWS2018-57
Object detection and image recognition using a Convolutional Neural Network (CNN) are used in embedded systems, which re... [more] VLD2018-94 HWS2018-57
pp.7-12
VLD, DC, CPSY, RECONF, CPM, ICD, IE, IPSJ-SLDM, IPSJ-EMB, IPSJ-ARC
(Joint) [detail]
2018-12-06
10:55
Hiroshima Satellite Campus Hiroshima A Tiny Memory implementation on an FPGA using Feature-Map Separable Convolution Technique
Akira Jinguji, Simpei Sato, Hiroki Nakahara (titech) RECONF2018-41
Object detection and image recognition using a convolutional neural network (CNN) are used in embedded systems. Embedded... [more] RECONF2018-41
pp.39-44
RECONF 2016-09-06
13:00
Toyama Univ. of Toyama A Memory-based Accelerator for a Random Forest Classification using Altera SDK for OpenCL
Hiroki Nakahara, Akira Jinguji, Tomoya Fujii, Shinpei Sato (TITECH), Naoya Maruyama (RIKEN) RECONF2016-36
 [more] RECONF2016-36
pp.57-62
CPSY, DC, IPSJ-ARC
(Joint) [detail]
2016-08-09
16:15
Nagano Kissei-Bunka-Hall (Matsumoto) An Acceleration of a Random Forest Classification using Altera SDK for OpenCL
Hiroki Nakahara, Akira Jinguji, Tomoya Fujii, Shinpei Sato (TITECH), Naoya Maruyama (RIKEN) CPSY2016-25
 [more] CPSY2016-25
pp.175-180
 Results 1 - 13 of 13  /   
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