Shin Ishii, Ph.D.
Affiliations: | Graduate School of Informatics | Kyoto University, Kyōto-shi, Kyōto-fu, Japan |
Area:
Computational neuroscienceGoogle:
"Shin Ishii"Cross-listing: Neurotree
Children
Sign in to add traineeTorsten Bullmann | research assistant | 2016-2017 | (Neurotree) |
Ken-ichi Amemori | grad student | Nara Institute of Science and Technology (Neurotree) | |
Kourosh Meshgi | grad student | 2011-2015 | Kyoto University (Neurotree) |
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Publications
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Fujita Y, Yagishita S, Kasai H, et al. (2020) Computational Characteristics of the Striatal Dopamine System Described by Reinforcement Learning With Fast Generalization. Frontiers in Computational Neuroscience. 14: 66 |
Urakubo H, Bullmann T, Kubota Y, et al. (2019) UNI-EM: An Environment for Deep Neural Network-Based Automated Segmentation of Neuronal Electron Microscopic Images. Scientific Reports. 9: 19413 |
Miyato T, Maeda SI, Ishii S, et al. (2018) Virtual Adversarial Training: A Regularization Method for Supervised and Semi-Supervised Learning. Ieee Transactions On Pattern Analysis and Machine Intelligence |
Liang Z, Hamada Y, Oba S, et al. (2018) Characterization of electroencephalography signals for estimating saliency features in videos. Neural Networks : the Official Journal of the International Neural Network Society. 105: 52-64 |
Meshgi K, Maeda SI, Oba S, et al. (2017) Constructing a meta-tracker using Dropout to imitate the behavior of an arbitrary black-box tracker. Neural Networks : the Official Journal of the International Neural Network Society. 87: 132-148 |
Meshgi K, Maeda S, Oba S, et al. (2016) An occlusion-aware particle filter tracker to handle complex and persistent occlusions Computer Vision and Image Understanding. 150: 81-94 |
Hirayama Ji, Hyvärinen A, Ishii S. (2016) Sparse and low-rank matrix regularization for learning time-varying Markov networks Machine Learning. 1-32 |
Shikauchi Y, Ishii S. (2015) Decoding the view expectation during learned maze navigation from human fronto-parietal network. Scientific Reports. 5: 17648 |
Meshgi K, Ishii S. (2015) The state-of-the-art in handling occlusions for visual object tracking Ieice Transactions On Information and Systems. 1260-1274 |
Fukushima M, Yamashita O, Kanemura A, et al. (2012) A state-space modeling approach for localization of focal current sources from MEG. Ieee Transactions On Bio-Medical Engineering. 59: 1561-71 |