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Satoshi Suzuki
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A transfer learning method with deep convolutional neural network for diffuse lung disease classification
H Shouno, S Suzuki, S Kido
Neural Information Processing: 22nd International Conference, ICONIP 2015 …, 2015
342015
Image pre-transformation for recognition-aware image compression
S Suzuki, M Takagi, K Hayase, T Onishi, A Shimizu
2019 IEEE International Conference on Image Processing (ICIP), 2686-2690, 2019
172019
Deep feature compression with spatio-temporal arranging for collaborative intelligence
S Suzuki, M Takagi, S Takeda, R Tanida, H Kimata
2020 IEEE International Conference on Image Processing (ICIP), 3099-3103, 2020
122020
Deep feature compression using spatio-temporal arrangement toward collaborative intelligent world
S Suzuki, S Takeda, M Takagi, R Tanida, H Kimata, H Shouno
IEEE Transactions on Circuits and Systems for Video Technology 32 (6), 3934-3946, 2021
112021
A study on visual interpretation of network in network
S Suzuki, H Shouno
2017 International Joint Conference on Neural Networks (IJCNN), 903-910, 2017
92017
A 2-staged transfer learning method with deep convolutional neural network for diffuse lung disease analysis
A Suzuki, S Suzuki, S Kido, H Shouno
Proceedings of International Forum on Medical Imaging in Asia, 160-163, 2017
82017
On the use of modality-specific large-scale pre-trained encoders for multimodal sentiment analysis
A Ando, R Masumura, A Takashima, S Suzuki, N Makishima, K Suzuki, ...
2022 IEEE Spoken Language Technology Workshop (SLT), 739-746, 2023
72023
Support vector machine histogram: New analysis and architecture design method of deep convolutional neural network
S Suzuki, H Shouno
Neural Processing Letters 47, 767-782, 2018
52018
An architecture design method of deep convolutional neural network
S Suzuki, H Shouno
Neural Information Processing: 23rd International Conference, ICONIP 2016 …, 2016
52016
Measuring shift-invariance of convolutional neural network with a probability-incorporated metric
H Higuchi, S Suzuki, H Shouno
Neural Information Processing: 28th International Conference, ICONIP 2021 …, 2021
32021
ディープラーニングの医用画像への応用
庄野逸, 鈴木聡志, 木戸尚治
医用画像情報学会雑誌 33 (4), 75-80, 2016
32016
Adversarial Finetuning with Latent Representation Constraint to Mitigate Accuracy-Robustness Tradeoff
S Suzuki, S Yamaguchi, S Takeda, S Kanai, N Makishima, A Ando, ...
International Conference on Computer Vision (ICCV), 2023
22023
Speaker consistency loss and step-wise optimization for semi-supervised joint training of TTS and ASR using unpaired text data
N Makishima, S Suzuki, A Ando, R Masumura
arXiv preprint arXiv:2207.04659, 2022
22022
Knowledge Transferred Fine-Tuning: Convolutional Neural Network Is Born Again With Anti-Aliasing Even in Data-Limited Situations
S Suzuki, S Takeda, N Makishima, A Ando, R Masumura, H Shouno
IEEE Access 10, 68384-68396, 2022
22022
Customer satisfaction estimation using unsupervised representation learning with multi-format prediction loss
A Ando, Y Murata, R Masumura, S Suzuki, N Makishima, T Moriya, ...
ICASSP 2022-2022 IEEE International Conference on Acoustics, Speech and …, 2022
22022
Knowledge transferred fine-tuning for anti-aliased convolutional neural network in data-limited situation
S Suzuki, S Takeda, R Tanida, H Kimata, H Shouno
2021 IEEE International Conference on Image Processing (ICIP), 864-868, 2021
22021
Architecture design of deep convolutional neural network for diffuse lung disease using representation separation information
S Suzuki, N Iida, H Shouno, S Kido
Proceedings of the International Conference on Parallel and Distributed …, 2016
22016
びまん性肺疾患識別における Deep Convolutional Neural Network 特徴の解析
鈴木聡志, 庄野逸, 木戸尚治
研究報告バイオ情報学 (BIO) 2015 (29), 1-6, 2015
2*2015
Deep Convolutional Neural Network を用いたびまん性肺疾患画像の特徴解析
鈴木聡志, 庄野逸, 木戸尚治
電子情報通信学会技術研究報告; 信学技報 114 (515), 259-264, 2015
22015
Distorted image classification using neural activation pattern matching loss
S Suzuki, S Takeda, R Tanida, Y Bandoh, H Shouno
Neural Networks 167, 50-64, 2023
12023
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