yizt / Cv Papers
Licence: apache-2.0
计算机视觉相关论文整理、记录、分享; 包括图像分类、目标检测、视觉跟踪/目标跟踪、人脸识别/人脸验证、OCR/场景文本检测及识别等领域。欢迎加星,欢迎指正错误,同时也期待能够共同参与!!! 持续更新中... ...
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cv-papers
计算机视觉相关论文整理、翻译、记录、分享;
包括图像分类、目标检测、视觉跟踪/目标跟踪、人脸识别/人脸验证、OCR/场景文本检测、识别等领域。
欢迎加星, 欢迎提问,欢迎指正错误, 同时也期待能够共同参与;长沙的朋友欢迎线下交流
持续更新中... ...
基础网络
目标检测
R-CNN 系列
R-FCN-3000
YOLO
yolo v3
SSD
DSSD
其它
G-CNN
语义分割
FCIS
YOLACT
人脸识别
视觉跟踪
Online Object Tracking: A Benchmark
C-COT
SiameseFC
ocr/场景文本检测
医学影像相关
依赖知识点
阅读说明
由于github对markdown 目录结构以及数据公式支持不好,请git clone 本仓库到本地,然后使用markdown阅读器(如:Typora等)进行阅读及编辑,效果如下:
a) 目录效果
b) 公式效果
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