awesome-computer-vision 计算机相关资源~-2016_the three r鈥檚 of computer vision: recognition, rec-程序员宅基地

技术标签: 计算机视觉  

Awesome Computer Vision: from: 

https://github.com/jbhuang0604/awesome-computer-vision#courses

A curated list of awesome computer vision resources, inspired by awesome-php.

For a list people in computer vision listed with their academic genealogy, please visit here

Contributing

Please feel free to send me pull requests or email ([email protected]) to add links.

Table of Contents

Books

Computer Vision

OpenCV Programming

Machine Learning

Fundamentals

Courses

Computer Vision

Computational Photography

Machine Learning and Statistical Learning

Optimization

Papers

Conference papers on the web

Survey Papers

Tutorials and talks

Computer Vision

Recent Conference Talks

3D Computer Vision

Internet Vision

Computational Photography

Learning and Vision

Object Recognition

Graphical Models

Machine Learning

Optimization

Deep Learning

Software

External Resource Links

General Purpose Computer Vision Library

Multiple-view Computer Vision

Feature Detection and Extraction

  • VLFeat
  • SIFT
    • David G. Lowe, "Distinctive image features from scale-invariant keypoints," International Journal of Computer Vision, 60, 2 (2004), pp. 91-110.
  • SIFT++
  • BRISK
    • Stefan Leutenegger, Margarita Chli and Roland Siegwart, "BRISK: Binary Robust Invariant Scalable Keypoints", ICCV 2011
  • SURF
    • Herbert Bay, Andreas Ess, Tinne Tuytelaars, Luc Van Gool, "SURF: Speeded Up Robust Features", Computer Vision and Image Understanding (CVIU), Vol. 110, No. 3, pp. 346--359, 2008
  • FREAK
    • A. Alahi, R. Ortiz, and P. Vandergheynst, "FREAK: Fast Retina Keypoint", CVPR 2012
  • AKAZE
    • Pablo F. Alcantarilla, Adrien Bartoli and Andrew J. Davison, "KAZE Features", ECCV 2012
  • Local Binary Patterns

High Dynamic Range Imaging

Semantic Segmentation

Low-level Vision

Stereo Vision

Optical Flow

Image Denoising

BM3D, KSVD,

Super-resolution

  • Multi-frame image super-resolution
    • Pickup, L. C. Machine Learning in Multi-frame Image Super-resolution, PhD thesis 2008
  • Markov Random Fields for Super-Resolution
    • W. T Freeman and C. Liu. Markov Random Fields for Super-resolution and Texture Synthesis. In A. Blake, P. Kohli, and C. Rother, eds., Advances in Markov Random Fields for Vision and Image Processing, Chapter 10. MIT Press, 2011
  • Sparse regression and natural image prior
    • K. I. Kim and Y. Kwon, "Single-image super-resolution using sparse regression and natural image prior", IEEE Trans. Pattern Analysis and Machine Intelligence, vol. 32, no. 6, pp. 1127-1133, 2010.
  • Single-Image Super Resolution via a Statistical Model
    • T. Peleg and M. Elad, A Statistical Prediction Model Based on Sparse Representations for Single Image Super-Resolution, IEEE Transactions on Image Processing, Vol. 23, No. 6, Pages 2569-2582, June 2014
  • Sparse Coding for Super-Resolution
    • R. Zeyde, M. Elad, and M. Protter On Single Image Scale-Up using Sparse-Representations, Curves & Surfaces, Avignon-France, June 24-30, 2010 (appears also in Lecture-Notes-on-Computer-Science - LNCS).
  • Patch-wise Sparse Recovery
    • Jianchao Yang, John Wright, Thomas Huang, and Yi Ma. Image super-resolution via sparse representation. IEEE Transactions on Image Processing (TIP), vol. 19, issue 11, 2010.
  • Neighbor embedding
    • H. Chang, D.Y. Yeung, Y. Xiong. Super-resolution through neighbor embedding. Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR), vol.1, pp.275-282, Washington, DC, USA, 27 June - 2 July 2004.
  • Deformable Patches
    • Yu Zhu, Yanning Zhang and Alan Yuille, Single Image Super-resolution using Deformable Patches, CVPR 2014
  • SRCNN
    • Chao Dong, Chen Change Loy, Kaiming He, Xiaoou Tang, Learning a Deep Convolutional Network for Image Super-Resolution, in ECCV 2014
  • A+: Adjusted Anchored Neighborhood Regression
    • R. Timofte, V. De Smet, and L. Van Gool. A+: Adjusted Anchored Neighborhood Regression for Fast Super-Resolution, ACCV 2014
  • Transformed Self-Exemplars
    • Jia-Bin Huang, Abhishek Singh, and Narendra Ahuja, Single Image Super-Resolution using Transformed Self-Exemplars, IEEE Conference on Computer Vision and Pattern Recognition, 2015

Image Deblurring

Non-blind deconvolution

Blind deconvolution

Non-uniform Deblurring

Image Completion

Image Retargeting

Alpha Matting

Image Pyramid

Edge-preserving image processing

Intrinsic Images

Contour Detection and Image Segmentation

Interactive Image Segmentation

Video Segmentation

Camera calibration

Simultaneous localization and mapping

SLAM community:

Tracking/Odometry:

Graph Optimization:

Loop Closure:

Localization & Mapping:

Single-view Spatial Understanding

Object Detection

Nearest Neighbor Search

General purpose nearest neighbor search

Nearest Neighbor Field Estimation

Visual Tracking

Saliency Detection

Attributes

Action Reconition

Egocentric cameras

Human-in-the-loop systems

Image Captioning

Optimization

  • Ceres Solver - Nonlinear least-square problem and unconstrained optimization solver
  • NLopt- Nonlinear least-square problem and unconstrained optimization solver
  • OpenGM - Factor graph based discrete optimization and inference solver
  • GTSAM - Factor graph based lease-square optimization solver

Deep Learning

Machine Learning

Datasets

External Dataset Link Collection

Low-level Vision

Stereo Vision

Optical Flow

Video Object Segmentation

Change Detection

Image Super-resolutions

Intrinsic Images

Material Recognition

Multi-view Reconsturction

Saliency Detection

Visual Tracking

Visual Surveillance

Saliency Detection

Change detection

Visual Recognition

Image Classification

Scene Recognition

Object Detection

Semantic labeling

Multi-view Object Detection

Fine-grained Visual Recognition

Pedestrian Detection

Action Recognition

Image-based

Video-based

Image Deblurring

Image Captioning

Scene Understanding

SUN RGB-D - A RGB-D Scene Understanding Benchmark Suite

NYU depth v2 - Indoor Segmentation and Support Inference from RGBD Images

Aerial images

Aerial Image Segmentation - Learning Aerial Image Segmentation From Online Maps

Resources for students

Resource link collection

Writing

Presentation

Research

Time Management

Blogs

Links

Songs

People in Computer Vision

Please feel free to send pull requests to add new links or correct wrong ones.

Sources:

==

Alex Pentland (MIT)

Marc Levoy (Google X)

版权声明:本文为博主原创文章,遵循 CC 4.0 BY-SA 版权协议,转载请附上原文出处链接和本声明。
本文链接:https://blog.csdn.net/qq_27009517/article/details/86569278

智能推荐

Homebrew国内如何自动安装(国内地址)_homebrew国内如何自动安装(国内地址)-程序员宅基地

文章浏览阅读161次。一、自动脚本(全部国内地址)(在Mac os终端中复制粘贴回车下面脚本)(已经安装过brew的请自行备份后,再运行下面的安装脚本!!!!!)安装脚本:/bin/zsh -c "$(curl -fsSL https://gitee.com/cunkai/HomebrewCN/raw/master/Homebrew.sh)"卸载脚本:/bin/zsh -c "$(curl -fsSL https://gitee.com/cunkai/HomebrewCN/raw/master/Homeb_homebrew国内如何自动安装(国内地址)

ValueError: Cannot feed value of shape (256, 9, 129) for Tensor 'model/inputs:0', which has shape_valueerror: cannot feed value of shape (256,) for -程序员宅基地

文章浏览阅读594次。问题描述speech-enhancement工程 [https://github.com/jtkim-kaist/Speech-enhancement]使用环境- tensorflow 1.7- librosa- matlab2017a- tensorboardX当我运行main.py时,发生以下错误。此时,使用的模型是fnn。 后来,当我在trnmodle.py中检查fnn模型..._valueerror: cannot feed value of shape (256,) for tensor u'weight_f:0', whic

error ‘xxx‘ is never reassigned. Use ‘const‘ instead prefer-const_error 'authorization' is never reassigned. use 'co-程序员宅基地

文章浏览阅读8.5k次。ts中使用let 或 var 变量进行声明,会出现一个报错:SLint:标识符’errMsg’永远不会被重新分配;使用’const’而不是’let’。(prefer-const)代码片段:解决办法:1、使用const 进行声明2、打开项目下的tslint.json文件,将prefer-const 设置为false。..._error 'authorization' is never reassigned. use 'const' instead prefer-const

redis进阶-程序员宅基地

文章浏览阅读213次。redis补充redis内部是单进程单线程的超时时间只有字符串默认 有字符串如何设置其他类型的数据设置超时时间字典类型设置超时时间(单位 秒)取出k2中的值问题:如果一个字典在redis中保存了10w个值,我需要将所有值全部循环并显示,请问如何实现?for item in r.hscan_iter('k2',count=100): print item问题2: ...

《大数据时代》读书笔记(一)-程序员宅基地

文章浏览阅读947次。作者:维克托 迈尔——舍恩伯格序言世界的本质就是数据,大数据将开启一次重大的时代转型;大数据发展的核心动力来源于人类测量、记录和分析世界的渴望从因果关系到相关关系的思维变革才是大数据的关键,建立在相关关系分析法基础上的预测才是大数据的核心推荐序一 拥抱 拥抱“大数据时代 大数据时代”发掘数据价值、征服数据海洋的“动力”就是云计算。以云计算为...

django.db.utils.IntegrityError: The row in table 'first_blog_blog' with primary key '1' has an inval_the row in table 'spao_amd_account' with primary k-程序员宅基地

文章浏览阅读2.4k次。昨天用django写网站的时候,用了一个外键后,一直报错。django.db.utils.IntegrityError: The row in table 'first_blog_blog' with primary key '1' has an invalid foreign key: first_blog_blog.blog_type_id contains a value 'pytho..._the row in table 'spao_amd_account' with primary key '1' has an invalid fore

随便推点

鸿蒙系统升级后内存变小了,鸿蒙升级第一夜服务器崩了,有人等到凌晨3点,称升级后内存变大...-程序员宅基地

文章浏览阅读3.7k次。原标题:鸿蒙升级第一夜服务器崩了,有人等到凌晨3点,称升级后内存变大6月2日晚间,华为宣布推出HarmonyOS 2,华为“百”款设备将陆续启动HarmonyOS 2升级,不少华为用户则经历了艰难的一夜。 最大规模升级第一夜服务器崩了有如五一小长假期间的在线购票系统12306,6月2日晚,因为太多人申请升级到鸿蒙系统,华为花粉俱乐部服务器一度崩了,根本无法点开,有人硬是抗到了凌晨3点钟左右才成功升..._鸿蒙手机内存越来越小

2021 年 iOS 应用程序开发七种最佳语言_apple 编写程序软件开发-程序员宅基地

文章浏览阅读5.1k次,点赞2次,收藏13次。原文地址移动应用程序现在几乎是每个在线业务的必备品。最新的 StatCounter 数据显示,多达56% 的在线连接是通过移动设备建立的,这使它们高于平板电脑和计算机。更重要的是,同一个消息来源说,其中27% 是 iOS 设备。因此,我们毫不怀疑** ——iOS 应用程序开发当然是值得投资的**。如果您想知道哪种 iOS 开发语言最适合此目的,那么您来对地方了。在本文中,您将找到有关此主题的所有最重要信息,包括:在开始构建 iOS 应用程序之前要记住的关键问题,适用于 iOS 开发的最_apple 编写程序软件开发

解决django项目因拆分settings.py导致的The SECRET_KEY setting must not be empty问题_setup api error: setup external api error: jwt_sec-程序员宅基地

文章浏览阅读608次。一,问题描述环境:Ubuntu 20.10python 3.8.6django 3.1.7IDE pycharmpro 2020.31,前期操作描述在开发项目时将settings.py文件进行了拆分,结构如下:其中develop.py文件内容如下:from .base import * # NOQAimport os# SECURITY WARNING: don't run with debug turned on in production!DEBUG = True# _setup api error: setup external api error: jwt_secret must be set

Qt/C++编写控件属性设计器11-导入xml_qt怎么添加自定义控件的xml文件-程序员宅基地

文章浏览阅读1.9k次。一、前言上一篇文章负责把设计好的控件数据导出到了xml文件,本偏文章负责把导出的xml数据文件导入,然后在画布上自动生成对应的控件,Qt内置的xml数据解析功能,非常强大,都封装在QtXml组件中,Qt有个好处就是,封装了众多的各大操作系统平台的功能,尤其是GUI控件,不愧是超大型一站式GUI超市,虽然网络组件不是很强大,但是应付一些基础应用还是绰绰有余的。在导出xml数据的时候,属性列表和值都..._qt怎么添加自定义控件的xml文件

Velocity.js--使用/教程/实例-程序员宅基地

文章浏览阅读1.6k次。其他网址Velocity.js的使用 - 小火柴的蓝色理想 - 博客园_velocity.js

linux wget 下载mysql_在Linux命令上下载文件的5个wget案例教程-程序员宅基地

文章浏览阅读285次。wget是Linux命令行实用程序,广泛用于从Linux命令行下载文件,有许多选项也可用于从远程服务器下载文件。wget与浏览器窗口中的open url相同。1:使用Wget下载文件下面的示例将从服务器下载文件到当前本地目录。$ wget https://tecadmin.net/file.zip2:下载文件并保存到特定位置下面的命令将下载名为file.zip的/ opt文件夹中的zip文件。-O..._linux mysql wget下载