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Titlebook: Deep Generative Models, and Data Augmentation, Labelling, and Imperfections; First Workshop, DGM4 Sandy Engelhardt,Ilkay Oksuz,Yuan Xue Con

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发表于 2025-3-21 19:44:00 | 显示全部楼层 |阅读模式
书目名称Deep Generative Models, and Data Augmentation, Labelling, and Imperfections
副标题First Workshop, DGM4
编辑Sandy Engelhardt,Ilkay Oksuz,Yuan Xue
视频video
丛书名称Lecture Notes in Computer Science
图书封面Titlebook: Deep Generative Models, and Data Augmentation, Labelling, and Imperfections; First Workshop, DGM4 Sandy Engelhardt,Ilkay Oksuz,Yuan Xue Con
描述This book constitutes the refereed proceedings of the First MICCAI Workshop on Deep Generative Models, DG4MICCAI 2021,  and the First MICCAI Workshop on Data Augmentation, Labelling, and Imperfections, DALI 2021, held in conjunction with MICCAI 2021, in October 2021. The workshops were planned to take place in Strasbourg, France, but were held virtually due to the COVID-19 pandemic..DG4MICCAI 2021 accepted 12 papers from the 17 submissions received. The workshop focusses on recent algorithmic developments, new results, and promising future directions in Deep Generative Models. Deep generative models such as Generative Adversarial Network (GAN) and Variational Auto-Encoder (VAE) are currently receiving widespread attention from not only the computer vision and machine learning communities, but also in the MIC and CAI community..For DALI 2021, 15 papers from 32 submissions were accepted for publication. They focus on rigorousstudy of medical data related to machine learning systems. . . .
出版日期Conference proceedings 2021
关键词artificial intelligence; bioinformatics; color image processing; computer vision; deep learning; image pr
版次1
doihttps://doi.org/10.1007/978-3-030-88210-5
isbn_softcover978-3-030-88209-9
isbn_ebook978-3-030-88210-5Series ISSN 0302-9743 Series E-ISSN 1611-3349
issn_series 0302-9743
copyrightSpringer Nature Switzerland AG 2021
The information of publication is updating

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Ultrasound Variational Style Transfer to Generate Images Beyond the Observed Domainent imaging settings. We address these problems using a novel variational style-transfer neural network that can sample various styles from a computed latent space to generate images from a broader domain than what was observed. We show that using our generative approach for ultrasound data augmenta
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Conditional Generation of Medical Images via Disentangled Adversarial Inferencentations of style and content, and use this information to impose control over conditional generation process. We undergo two novel regularization steps to ensure content-style disentanglement. First, we minimize the shared information between content and style by introducing a novel application of
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CT-SGAN: Computed Tomography Synthesis GAN the CT-SGAN model that generates large-scale 3D synthetic CT-scan volumes (.) when trained on a small dataset of chest CT-scans. CT-SGAN offers an attractive solution to two major challenges facing machine learning in medical imaging: a small number of given i.i.d. training data, and the restrictio
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CaCL: Class-Aware Codebook Learning for Weakly Supervised Segmentation on Diffuse Image Patternsons (classification), as biomedical images naturally contain image-wise labels in many scenarios. The current weakly supervised learning algorithms from the computer vision community are largely designed for focal objects (e.g., dogs and cats). However, such algorithms are not optimized for diffuse
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BrainNetGAN: Data Augmentation of Brain Connectivity Using Generative Adversarial Network for Dement remains a challenge to identify the individuals at risk of dementia for precise management. Brain MRI offers a non-invasive biomarker to detect brain aging. Previous evidence shows that the structural brain network generated from the diffusion MRI promises to classify dementia accurately based on d
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