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 Conference Papers (Available on Advance Programs)  (Sort by: Date Descending)
 Results 1 - 20 of 48  /  [Next]  
Committee Date Time Place Paper Title / Authors Abstract Paper #
MI 2024-03-03
09:41
Okinawa OKINAWAKEN SEINENKAIKAN
(Primary: On-site, Secondary: Online)
A preliminary study on deep causal discovery model for image classification
Ryohei Motoda, Megumi Nakao (Kyoto Univ.) MI2023-33
Although saliency map used in image classification can visualize the regions correlated with predicted class, it cannot ... [more] MI2023-33
pp.11-14
MI 2024-03-04
09:00
Okinawa OKINAWAKEN SEINENKAIKAN
(Primary: On-site, Secondary: Online)
Distance-informed adversarial learning for metal artifact reduction
Daisuke Shigemori, Megumi Nakao (Kyoto Univ.) MI2023-62
In this study, we propose an adversarial learning framework that utilises distance information from metal to reduce CT m... [more] MI2023-62
pp.95-98
MI 2024-03-04
09:48
Okinawa OKINAWAKEN SEINENKAIKAN
(Primary: On-site, Secondary: Online)
A trial for improvement in image quality of cone-beam CT images using conditional diffusion model
Naruki Murahashi, Mitsuhiro Nakamura, Megumi Nakao (Kyoto Univ.) MI2023-66
In this study, we propose a method to improve the image quality of CBCT images based on a conditional diffusion model th... [more] MI2023-66
pp.109-112
MI, MICT 2023-11-14
14:40
Fukuoka   Construction of organ shape atlas by MeshVAE using hierarchical latent variables
Ryuichi Umehara, Mitsuhiro Nakamura, Megumi Nakao (Kyoto University) MICT2023-33 MI2023-26
 [more] MICT2023-33 MI2023-26
pp.33-36
MI 2023-05-18
13:00
Aichi Nagoya Congress Center [Invited Talk] Deep learning based 2D/3D registration for deformable organs
Megumi Nakao (Kyoto Univ.) MI2023-1
 [more] MI2023-1
p.1
MI 2023-03-07
16:26
Okinawa OKINAWA SEINENKAIKAN
(Primary: On-site, Secondary: Online)
Construction of an organ shape and position atlas using 3D Mesh Variational Autoencoder
Ryuichi Umehara, Mitsuhiro Nakamura, Megumi Nakao (Kyoto University) MI2022-124
 [more] MI2022-124
pp.205-209
SIP, BioX, IE, MI, ITE-IST, ITE-ME [detail] 2022-05-20
16:00
Kumamoto Kumamoto University Kurokami Campus
(Primary: On-site, Secondary: Online)
Application of LambdaNetwork learning long-range interactions between pixels to metal artifact detection
Daisuke Shigemori, Megumi Nakao, Tetsuya Matsuda (Kyoto Univ.) SIP2022-27 BioX2022-27 IE2022-27 MI2022-27
Although deep learning-based image transformation has been attempted to be applied to metal artifact reduction, feature ... [more] SIP2022-27 BioX2022-27 IE2022-27 MI2022-27
pp.138-143
SIP, BioX, IE, MI, ITE-IST, ITE-ME [detail] 2022-05-20
16:20
Kumamoto Kumamoto University Kurokami Campus
(Primary: On-site, Secondary: Online)
Visualization of Important Features for Classifier Decisions using Deep Image Synthesis
Yushi Haku, Megumi Nakao, Tetsuya Matsuda (Kyoto Univ.) SIP2022-28 BioX2022-28 IE2022-28 MI2022-28
It is difficult to know the basis for the decisions of machine learning models, and it is necessary to provide a highly ... [more] SIP2022-28 BioX2022-28 IE2022-28 MI2022-28
pp.144-149
MI 2022-01-26
13:39
Online Online Deep Learning based 2D/3D deformable Image Registration for Abdominal Organs
Ryuto Miura, Megumi Nakao, Mitsuhiro Nakamura, Tetsuya Matsuda (Kyoto Univ.) MI2021-62
2D/3D image registration is a problem that solves the deformation and alignment of a pre-treatment 3D image to a 2D proj... [more] MI2021-62
pp.70-75
MI, MICT [detail] 2021-11-05
09:00
Online Online Deformable model registration for a single projection image by learning displacement fields
Megumi Nakao, Mitsuhiro Nakamura, Tetsuya Matsuda (Kyoto Univ.) MICT2021-27 MI2021-25
(To be available after the conference date) [more] MICT2021-27 MI2021-25
pp.1-6
MI, MICT [detail] 2021-11-05
09:20
Online Online Force estimation in forceps manipulation of ex-vivo organs from a single-viewpoint camera image
Hikaru Toda, Megumi Nakao, Kimihiko Masui, Naoto Kume, Tetsuya Matsuda (Kyoto Univ.) MICT2021-28 MI2021-26
In laparoscopic surgery including robotic surgery, it is not possible to accurately measure the contact force applied to... [more] MICT2021-28 MI2021-26
pp.7-12
MI 2021-03-15
13:45
Online Online Surgical planning model generation by extracting important feature sets in mandibular reconstruction
Kazuki Nagai, Megumi Nakao (Kyoto Univ.), Nobuhiro Ueda (Nara Medical Univ.), Yuichiro Imai (Rakuwakai Otowa Hospital), Toshihide Hatanaka, Tadaaki Kirita (Nara Medical Univ.), Tetsuya Matsuda (Kyoto Univ.) MI2020-54
Because implicit medical knowledge and experience are used to perform medical treatment, such decisions must be clarifie... [more] MI2020-54
pp.29-34
MI 2021-03-15
14:00
Online Online Analysis of important features in surgical planning for mandibular reconstruction among multiple surgeons
Yusuke Hatakeyama, Kazuki Nagai, Megumi Nakao, Tetsuya Matsuda (Kyoto Univ.) MI2020-55
Surgeons perform surgical treatment by considering the facilities and policies of medical institutions and their own exp... [more] MI2020-55
pp.35-40
MI 2021-03-16
14:00
Online Online Deformable mesh registration of partial lung shapes based on learning of pneumothorax deformation
Hinako Maekawa, Megumi Nakao (Kyoto Univ.), Katsutaka Mineura (Kyoto Univ. Hospital), Toyofumi F. Chen-Yoshikawa (Nagoya Univ. Hospital), Tetsuya Matsuda (Kyoto Univ.) MI2020-74
Intraoperative pneumothorax is accompanied by large deformation including rotation. As intraoperative cone-beam CT (CBCT... [more] MI2020-74
pp.112-117
MI 2020-09-03
10:00
Online Online Lung region segmentation of thoracoscopic image with unsupervised image translation
Jumpei Nitta, Megumi Nakao (Kyoto Univ.), Keiho Imanishi (e-Growth Co. Ltd.), Tetsuya Matsuda (Kyoto Univ.) MI2020-19
In endoscopic surgery, it is necessary to understand the three-dimensional structure of the target region to improve saf... [more] MI2020-19
pp.13-18
MI 2020-09-03
14:10
Online Online Reconstruction of 3D Organ Shape from a Single X-ray Image using Graph Convolutional Network
Fei Tong, Megumi Nakao (Kyoto Univ.), Shuqiong Wu (Osaka Univ.), Mitsuhiro Nakamura, Tetsuya Matsuda (Kyoto Univ.) MI2020-28
 [more] MI2020-28
pp.45-50
MI 2020-09-03
14:25
Online Online Proposal of 3D Generative Adversarial Network for Improving Image Ouality of Cone-Beam CT Images
Takumi Hase, Megumi Nakao (Kyoto Univ.), Keoho Imanishi (e-Growth Co., Ltd), Mitsuhiro Nakamura, Tetsuya Matsuda (Kyoto Univ.) MI2020-29
Artifacts and defects included in Cone-beam CT (CBCT) images have become an obstacle in radiation therapy and surgery su... [more] MI2020-29
pp.51-56
MI 2020-09-03
14:40
Online Online Analysis of pneumothorax deformation for in vivo animal lungs using model-based registration
Kotaro Kobayashi, Megumi Nakao, Junko Tokuno (Kyoto Univ.), Toyofumi F Chen-Yoshikawa (Nagoya Univ.), Tetsuya Matsuda (Kyoto Univ.) MI2020-30
(To be available after the conference date) [more] MI2020-30
pp.57-62
NC, MBE
(Joint)
2020-03-06
14:15
Tokyo University of Electro Communications
(Cancelled but technical report was issued)
Identification of pick and grasp manipulation based on fingertip force and velocity
Tatsuya Yamashita, Megumi Nakao, Tetsuya Matsuda (Kyoto Univ.) MBE2019-98
Finger manipulation plays an important role in daily life, and the importance of its analysis is increasing in a variety... [more] MBE2019-98
pp.91-96
MI 2020-01-29
10:45
Okinawa OKINAWAKEN SEINENKAIKAN Proposal of Extraction Method of Important Features in Surgical Planning for Mandibular Reconstruction
Kazuki Nagai, Megumi Nakao (Kyoto Univ.), Nobuhiro Ueda (Nara Medical Univ.), Yuichiro Imai (Rakuwakai Otowa Hospital), Tadaaki Kirita (Nara Medical Univ.), Tetsuya Matsuda (Kyoto Univ.) MI2019-70
As implicit medical knowledge and experience are used to perform medical treatment, clarification of decision making is ... [more] MI2019-70
pp.23-28
 Results 1 - 20 of 48  /  [Next]  
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