找回密碼
 To register

QQ登錄

只需一步,快速開始

掃一掃,訪問微社區(qū)

打印 上一主題 下一主題

Titlebook: Domain Adaptation and Representation Transfer, and Distributed and Collaborative Learning; Second MICCAI Worksh Shadi Albarqouni,Spyridon B

[復(fù)制鏈接]
樓主: 矜持
11#
發(fā)表于 2025-3-23 10:56:12 | 只看該作者
12#
發(fā)表于 2025-3-23 15:51:57 | 只看該作者
Conference proceedings 2020st MICCAI Workshop on Distributed and Collaborative Learning, DCL 2020, held in conjunction with MICCAI 2020 in October 2020. The conference was planned to take place in Lima, Peru, but changed to an online format due to the Coronavirus pandemic.?..For DART 2020, 12 full papers were accepted from 18
13#
發(fā)表于 2025-3-23 19:50:25 | 只看該作者
14#
發(fā)表于 2025-3-24 01:48:59 | 只看該作者
15#
發(fā)表于 2025-3-24 03:28:43 | 只看該作者
Augmented Radiology: Patient-Wise Feature Transfer Model for Glioma Grading the purpose of reducing unnecessary biopsies and diagnostic burden, we propose a patient-wise feature transfer model for learning the relationship of phenotypes between radiological images and pathological images. We hypothesize that high-level features from the same patient are possible to be link
16#
發(fā)表于 2025-3-24 09:09:08 | 只看該作者
Attention-Guided Deep Domain Adaptation for Brain Dementia Identification with Multi-site Neuroimagiious methods typically assume that multi-site data are sampled from the same distribution. Such an assumption may not hold in practice due to the data heterogeneity caused by different scanning parameters and subject populations in multiple imaging sites. Even though several deep domain adaptation m
17#
發(fā)表于 2025-3-24 12:49:19 | 只看該作者
Registration of Histopathology Images Using Self Supervised Fine Grained Feature Mapsration performance. We propose to integrate segmentation information in a registration framework using fine grained feature maps obtained in a self supervised manner. Self supervised feature maps enables use of segmentation information despite the unavailability of manual segmentations. Experimental
18#
發(fā)表于 2025-3-24 16:20:36 | 只看該作者
Cross-Modality Segmentation by Self-supervised Semantic Alignment in Disentangled Content Spacege of images from different modalities has great clinical benefits. However, the generalization ability of deep networks on different modalities is challenging due to domain shift. In this work, we investigate the challenging unsupervised domain adaptation problem of cross-modality medical image seg
19#
發(fā)表于 2025-3-24 20:58:20 | 只看該作者
Semi-supervised Pathology Segmentation with Disentangled Representationsvised approaches by combining labelled and unlabelled data can offer a solution to data scarcity. An approach to semi-supervised learning relies on reconstruction objectives (as self-supervision objectives) that learns in a joint fashion suitable representations for the task. Here, we propose Anatom
20#
發(fā)表于 2025-3-24 23:11:57 | 只看該作者
Parts2Whole: Self-supervised Contrastive Learning via Reconstructionbanks, making it unappealing for 3D medical imaging, while in 3D medical imaging, reconstruction-based self-supervised learning reaches a new height in performance, but lacks mechanisms to learn contrastive representation; therefore, this paper proposes a new framework for self-supervised contrastiv
 關(guān)于派博傳思  派博傳思旗下網(wǎng)站  友情鏈接
派博傳思介紹 公司地理位置 論文服務(wù)流程 影響因子官網(wǎng) 吾愛論文網(wǎng) 大講堂 北京大學(xué) Oxford Uni. Harvard Uni.
發(fā)展歷史沿革 期刊點(diǎn)評(píng) 投稿經(jīng)驗(yàn)總結(jié) SCIENCEGARD IMPACTFACTOR 派博系數(shù) 清華大學(xué) Yale Uni. Stanford Uni.
QQ|Archiver|手機(jī)版|小黑屋| 派博傳思國際 ( 京公網(wǎng)安備110108008328) GMT+8, 2026-2-5 16:09
Copyright © 2001-2015 派博傳思   京公網(wǎng)安備110108008328 版權(quán)所有 All rights reserved
快速回復(fù) 返回頂部 返回列表
湖南省| 普安县| 望都县| 哈尔滨市| 洪湖市| 泌阳县| 宕昌县| 和硕县| 渑池县| 马鞍山市| 晋城| 柳河县| 靖宇县| 清原| 高雄县| 平武县| 榕江县| 上栗县| 潼南县| 宝山区| 玛沁县| 桂阳县| 循化| 林甸县| 庆安县| 临汾市| 涿州市| 富顺县| 德惠市| 汤阴县| 鄄城县| 成安县| 前郭尔| 昌宁县| 恩平市| 大关县| 通城县| 烟台市| 宽城| 张家川| 长泰县|