2021年度 人工知能学会全国大会(第35回)

講演情報

IEEE CYBCONF

IEEE CYBCONF » IEEE CYBCONF

[2M4-CC] Late Breaking Research Session - B

2021年6月9日(水) 15:20 〜 17:20 M会場 (CybConf会場)

Emi Yuda

16:20 〜 16:40

[2M4-CC-04] Generative Adversarial Network driven Synthetic Augmentation of Confocal Immunofluorescence Image Segmentation

Daiki Katsuma1, Hirhoaru Kawanaka1, V.B. Surya Prasath2, Bruce J. Aronow2 (1. Mie University, 2. Cincinnati Children’s Hospital Medical Center)

Human lung development requires complex gene and cell interactions, and lung development can be studied at gene, cellular, and molecular levels. Availability of multimodal imaging data of the lung can help us visualize protein and cell localization in various lung structures. In particular, confocal Immunofluorescence (IF) images can be used in lung development modeling, and the authors require multi-class segmentation as a necessary requirement. It is, however, difficult to get a sizable number of training images in the multi-class segmentation with recent deep learning models, e.g. the convolutional neural network (CNN) methods. Here, in order to improve the overall accuracy of multi-class segmentation in lung confocal IF images, we carried out the data augmentation with Generative Adversarial Network (GAN). By creating high fidelity synthetic images generated by GAN, it is expected that the synthetically generated images can be mixed with the original images to increase the accuracy of the automatic segmentation.
In this study, we investigate the effects of changing generation models and the number of synthetic images in the training segmentation models. Our experimental results indicate that we can generate better quality synthetic image sets by using GauGAN. Also, the more significant number of synthetically generated images can be of use in deep CNN based segmentation models. At the moment, our approach were up 13.1% on average in 6 classes classification compared to the case without adding the synthetic images. In the future, we should implement and train other segmentation models with synthetic images. We hope to be satisfied with sufficient accuracy for further lung analysis.

講演PDFパスワード認証
論文PDFの閲覧にはログインが必要です。参加登録者の方は「参加者用ログイン」画面からログインしてください。あるいは論文PDF閲覧用のパスワードを以下にご入力ください。

パスワード