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IEEE Lifetech 2019に当研究室の論文が採択されました。

The 2019 IEEE 1st Global Conference on Life Sciences and Technologies (LifeTech 2019)に当研究室より投稿した以下の10件の論文が採択されました。
(1)
Yusuke Akamatsu, Ryosuke Harakawa, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Semi-supervised Discriminative CCA for Estimating Viewed Image Categories from fMRI Data
(2)
Masanao Matsumoto, Naoki Saito, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Chronic Gastritis Detection from Gastric X-ray Images via Deep Autoencoding Gaussian Mixture Models
(3)
Yuya Moroto, Keisuke Maeda, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Estimation of Visual Attention via Canonical Correlation between Visual and Gaze-based Features
(4)
Tetsuya Kushima, Sho Takahashi, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Estimation of users’ interest levels using tensor completion with SemiCCA
(5)
Zongyao Li, Ren Togo, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Classification of Subcellular Protein Patterns in Human Cells with Transfer Learning
(6)
Misaki Kanai, Ren Togo, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Fine-tuning of Pre-trained DCNN for Gastritis Detection from Gastric X-ray Images
(7)
Taiga Matsui, Naoki Saito and Takahiro Ogawa (Hokkaido University, Japan); Satoshi Asamizu (Kushiro National College of Technology, Japan); Miki Haseyama (Hokkaido University, Japan)
Estimation of Emotions Evoked by Images Based on Multiple Gaze-based CNN Features
(8)
Haruna Watanabe, Ren Togo, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Bone Metastatic Tumor Detection Based on AnoGAN Using CT Images
(9)
Akira Toyoda, Takahiro Ogawa and Miki Haseyama (Hokkaido University, Japan)
Video Classification Based on User Preferences with Soft-bag Multiple Instance Learning
(10)
Ren Togo, Takahiro Ogawa, Osamu Manabe, Kenji Hirata, Tohru Shiga and Miki Haseyama (Hokkaido University, Japan)
Extraction of Regions Related to Cardiac Sarcoidosis in Polar Map Images