找回密码
 To register

QQ登录

只需一步,快速开始

扫一扫,访问微社区

Titlebook: Deep Generative Models; Second MICCAI Worksh Anirban Mukhopadhyay,Ilkay Oksuz,Yixuan Yuan Conference proceedings 2022 The Editor(s) (if app

[复制链接]
楼主: GOLF
发表于 2025-3-28 15:25:47 | 显示全部楼层
Cross Attention Transformers for Multi-modal Unsupervised Whole-Body PET Anomaly Detectionthe transformer via cross-attention, i.e. supplying anatomical reference information from paired CT images to aid the PET anomaly detection task. Using 83 whole-body PET/CT samples containing various cancer types, we show that our anomaly detection method is robust and capable of achieving accurate
发表于 2025-3-28 18:59:02 | 显示全部楼层
Interpreting Latent Spaces of Generative Models for Medical Images Using Unsupervised Methodsize. Furthermore, the directions show that the generative models capture 3D structure despite being presented only with 2D data. The results show that unsupervised methods to discover interpretable directions in GANs generalize to VAEs and can be applied to medical images. This opens a wide array of
发表于 2025-3-28 23:10:51 | 显示全部楼层
发表于 2025-3-29 06:03:09 | 显示全部楼层
发表于 2025-3-29 09:28:13 | 显示全部楼层
Flow-Based Visual Quality Enhancer for Super-Resolution Magnetic Resonance Spectroscopic Imagings clinical applications. Deep learning-based super-resolution methods provided promising results for improving the spatial resolution of MRSI, but the super-resolved images are often blurry compared to the experimentally-acquired high-resolution images. Attempts have been made with the generative ad
发表于 2025-3-29 11:33:41 | 显示全部楼层
Cross Attention Transformers for Multi-modal Unsupervised Whole-Body PET Anomaly Detectione, stage and predict the evolution of cancer. Due to this heterogeneity, a general-purpose cancer detection model can be built using unsupervised learning anomaly detection models; these models learn a healthy representation of tissue and detect cancer by predicting deviations from healthy appearanc
发表于 2025-3-29 18:02:59 | 显示全部楼层
发表于 2025-3-29 21:27:15 | 显示全部楼层
发表于 2025-3-30 03:27:20 | 显示全部楼层
Learning Generative Factors of EEG Data with Variational Auto-Encodersna of interest. We address this challenge by applying the framework of variational auto-encoders to 1) classify multiple pathologies and 2) recover the neurological mechanisms of those pathologies in a data-driven manner. Our framework learns generative factors of data related to pathologies. We pro
发表于 2025-3-30 06:39:03 | 显示全部楼层
An Image Feature Mapping Model for Continuous Longitudinal Data Completion and Generation of Synthetlete, or have inconsistencies between observations. Thus, we propose a generative model that not only produces continuous trajectories of fully synthetic patient images, but also imputes missing data in existing trajectories, by estimating realistic progression over time. Our generative model is tra
 关于派博传思  派博传思旗下网站  友情链接
派博传思介绍 公司地理位置 论文服务流程 影响因子官网 SITEMAP 大讲堂 北京大学 Oxford Uni. Harvard Uni.
发展历史沿革 期刊点评 投稿经验总结 SCIENCEGARD IMPACTFACTOR 派博系数 清华大学 Yale Uni. Stanford Uni.
|Archiver|手机版|小黑屋| 派博传思国际 ( 京公网安备110108008328) GMT+8, 2025-5-8 04:02
Copyright © 2001-2015 派博传思   京公网安备110108008328 版权所有 All rights reserved
快速回复 返回顶部 返回列表