Xinya Liu's repositories

awesome-cs-books

经典编程书籍大全,涵盖:计算机系统与网络、系统架构、算法与数据结构、前端开发、后端开发、移动开发、数据库、测试、项目与团队、程序员职业修炼、求职面试等

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awesome-source-free-test-time-adaptation

[2022] A curated list of papers in Test-time Adaptation, Test-time Training and Source-free Domain Adaptation

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nnUNet

nnuent源码。

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CLIP

CLIP (Contrastive Language-Image Pretraining), Predict the most relevant text snippet given an image

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CLIP-Driven-Universal-Model

Rank first in Medical Segmentation Decathlon (MSD) Competition.

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DAG4MIA

Domain Adaptation and Generalization for Medical Image Analysis

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dataset

医学影像数据集列表 『An Index for Medical Imaging Datasets』

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DTC

Semi-supervised Medical Image Segmentation through Dual-task Consistency

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Dual-Normalization

[CVPR‘22] Generalizable Cross-modality Medical Image Segmentation via Style Augmentation and Dual Normalization

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hackingtool

ALL IN ONE Hacking Tool For Hackers

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hecktor

20220707 这是2021年hecktor的数据预处理代码,三天前有更新,于是我重新fork了源库。

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hecktor-1

前年hecktor排名第一的代码 yyds 20220708

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i2pdbrowser

i2pd browser bundle

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leeml-notes

李宏毅《机器学习》笔记,在线阅读地址:https://datawhalechina.github.io/leeml-notes

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machine-learning-articles

🧠💬 Articles I wrote about machine learning, archived from MachineCurve.com.

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mae

PyTorch implementation of MAE https//arxiv.org/abs/2111.06377

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mini_gtest

C语言100行内仿 GoogleTest 测试框架(以及GitHub笔记)

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nibabel

对一些常见的神经影像文件格式进行读/写访问 【20220708】 官方网址:https://nipy.org/nibabel/ Python package to access a cacophony of neuro-imaging file formats

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PaddleSeg

Easy-to-use image segmentation library with awesome pre-trained model zoo, supporting wide-range of practical tasks in Semantic Segmentation, Interactive Segmentation, Panoptic Segmentation, Image Matting, 3D Segmentation, etc.PaddleSeg是基于飞桨PaddlePaddle开发的端到端图像分割开发套件,涵盖了高精度和轻量级等不同方向的大量高质量分割模型。通过模块化的设计,提供了配置化驱动和API调用两种应用方式,帮助开发者更便捷地完成从训练到部署的全流程图像分割应用。分割在医疗上广泛应用,例如病灶分割,血管分割等。

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Paper-Reading-Group

List shared papers in our group

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Python

All Algorithms implemented in Python

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python-small-examples

告别枯燥,致力于打造 Python 实用小例子,更多Python良心教程见 Python中文网 http://www.zglg.work

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pytorch-image-models

PyTorch image models, scripts, pretrained weights -- ResNet, ResNeXT, EfficientNet, EfficientNetV2, NFNet, Vision Transformer, MixNet, MobileNet-V3/V2, RegNet, DPN, CSPNet, and more csdn讲解:https://blog.csdn.net/a486259/article/details/123525448

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RAM-DSIR

[ECCV'22] Generalizable Medical Image Segmentation via Random Amplitude Mixup and Domain-Specific Image Restoration

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SegLoss

20220707有关分割的各种loss阐述。对应论文存在本地电脑 G:\1-Healthcare Intelligence Laboratory\3-Graduation project\2-ReadPaper\add_knowledge\seg_loss 中。A collection of loss functions for medical image segmentation

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SimpleITK-Notebooks

20220709 SimpleITK-笔记本 Jupyter notebooks for learning how to use SimpleITK

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tdesktop

Telegram Desktop messaging app

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TUTORIAL

(20220709) 此存储库包含 SimpleITK 教程中使用的代码。 如果您正在寻找成为 SimpleITK 熟练用户的最快方法,我们强烈建议您完成本教程。 它包括几个小时的教学材料,非常值得投入时间。 因此,请访问网站并开始您的 Insight 之旅。+ 官方配套的教程是 :https://simpleitk.org/TUTORIAL/

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tutorials

20220709 从 CT 图像中进行肺病灶分割的 U-Net 模型 MONAI Tutorials

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Web

千古前端图文教程,超详细的前端入门到进阶学习笔记。从零开始学前端,做一名精致优雅的前端工程师。

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