Title of article :
Interactive Echocardiography Translation Using Few-Shot GAN Transfer Learning
Author/Authors :
Teng, Long University of Chinese Academy of Sciences - Beijing, China , Fu, ZhongLiang University of Chinese Academy of Sciences - Beijing, China , Ma, Qian Sichuan University of Media and Communications - Chengdu, China , Yao, Yu University of Chinese Academy of Sciences - Beijing, China , Zhang, Bing Sichuan University of Media and Communications - Chengdu, China , Zhu, Kai University of Chinese Academy of Sciences - Beijing, China , Li, Ping West China Hospital - Sichuan University - Chengdu, China
Pages :
8
From page :
1
To page :
8
Abstract :
Interactive echocardiography translation is an efficient educational function to master cardiac anatomy. It strengthens the student’s understanding by pixel-level translation between echocardiography and theoretically sketch images. Previous research studies split it into two aspects of image segmentation and synthesis. ,is split makes it hard to achieve pixellevel corresponding translation. Besides, it is also challenging to leverage deep-learning-based methods in each phase where a handful of annotations are available. Methods. To address interactive translation with limited annotations, we present a two-step transfer learning approach. Firstly, we train two independent parent networks, the ultrasound to sketch (U2S) parent network and the sketch to ultrasound (S2U) parent network. U2S translation is similar to a segmentation task with sector boundary inference. ,erefore, the U2S parent network is trained with the U-Net network on the public segmentation dataset of VOC2012. S2U aims at recovering ultrasound texture. So, the S2U parent network is decoder networks that generate ultrasound data from random input. After pretraining the parent networks, an encoder network is attached to the S2U parent network to translate ultrasound images into sketch images. We jointly transfer learning U2S and S2U within the CGAN framework. Results and conclusion. Quantitative and qualitative contrast from 1-shot, 5-shot, and 10-shot transfer learning show the effectiveness of the proposed algorithm. ,e interactive translation is achieved with few-shot transfer learning. ,us, the development of new applications from scratch is accelerated. Our few-shot transfer learning has great potential in the biomedical computer-aided image translation field, where annotation data are extremely precious.
Keywords :
Echocardiography , GAN , Translation , U2S
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2020
Full Text URL :
Record number :
2614443
Link To Document :
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