点击上方“专知”关注获取专业AI知识!
【导读】主题荟萃知识是专知的核心功能之一,为用户提供AI领域系统性的知识学习服务。主题荟萃为用户提供全网关于该主题的精华(Awesome)知识资料收录整理,使得AI从业者便捷学习和解决工作问题!在专知人工智能主题知识树基础上,主题荟萃由专业人工编辑和算法工具辅助协作完成,并保持动态更新!另外欢迎对此创作主题荟萃感兴趣的同学,请加入我们专知AI创作者计划,共创共赢! 今天专知为大家呈送第十五篇专知主题荟萃-图像检索知识资料大全集荟萃 (入门/进阶/综述/视频/代码/专家等),请大家查看!专知访问www.zhuanzhi.ai, 或关注微信公众号后台回复" 专知"进入专知,搜索主题“图像检索”查看。此外,我们也提供该文网页桌面手机端(www.zhuanzhi.ai)完整访问,可直接点击访问收录链接地址,以及pdf版下载链接,请文章末尾查看!此为初始版本,请大家指正补充,欢迎在后台留言!欢迎大家分享转发~
图像检索(Image Retrieval)专知荟萃
入门学习
进阶文章
综述
Tutorial
视频教程
代码
领域专家
Datasets
相似图片搜索的原理 阮一峰
[http://www.ruanyifeng.com/blog/2011/07/principle_of_similar_image_search.html\]
Google 图片搜索的原理是什么?
[https://www.zhihu.com/question/19726630]
基于内容的图像检索技(CBIR)术相术介绍
[http://blog.csdn.net/kezunhai/article/details/11614989]
图像检索:基于内容的图像检索技术
[http://yongyuan.name/blog/cbir-technique-summary.html]
基于内容的图像检索技术
[http://www.cs.cmu.edu/~juny/Prof/papers/Part2-CBIR.pdf\]
图像检索:CNN卷积神经网络与实战 CNN for Image Retrieval
[http://yongyuan.name/blog/CBIR-CNN-and-practice.html]
用Python和OpenCV创建一个图片搜索引擎的完整指南
[http://blog.csdn.net/kezunhai/article/details/46417041]
Using Very Deep Autoencoders for Content-Based Image Retrieval
[https://www.cs.toronto.edu/~hinton/absps/esann-deep-final.pdf\]
Learning High-level Image Representation for Image Retrieval via Multi-Task DNN using Clickthrough Data
[http://arxiv.org/abs/1312.4740]
Neural Codes for Image Retrieval
[http://arxiv.org/abs/1404.1777]
Efficient On-the-fly Category Retrieval using ConvNets and GPUs
[http://arxiv.org/abs/1407.4764]
Learning visual similarity for product design with convolutional neural networks SIGGRAPH 2015
[http://www.cs.cornell.edu/~kb/publications/SIG15ProductNet.pdf\]
Exploiting Local Features from Deep Networks for Image Retrieval
[https://arxiv.org/abs/1504.05133]
Cross-domain Image Retrieval with a Dual Attribute-aware Ranking Network ICCV 2015
[http://arxiv.org/abs/1505.07922]
Where to Buy It: Matching Street Clothing Photos in Online Shops ICCV 2015
[http://www.tamaraberg.com/papers/street2shop.pdf]
Aggregating Deep Convolutional Features for Image Retrieval
[http://arxiv.org/abs/1510.07493]
Particular object retrieval with integral max-pooling of CNN activations
[https://arxiv.org/abs/1511.05879]
Deep Image Retrieval: Learning global representations for image search ECCV 2016
[https://arxiv.org/abs/1604.01325]
Learning Compact Binary Descriptors with Unsupervised Deep Neural Networks. CVPR 2016
[http://www.cv-foundation.org/openaccess/content_cvpr_2016/papers/Lin_Learning_Compact_Binary_CVPR_2016_paper.pdf\]
Fast Training of Triplet-based Deep Binary Embedding Networks. CVPR 2016
[http://www.cv-foundation.org/openaccess/content_cvpr_2016/papers/Zhuang_Fast_Training_of_CVPR_2016_paper.pdf\]
Deep Relative Distance Learning: Tell the Difference Between Similar Vehicles. CVPR 2016
[http://www.cv-foundation.org/openaccess/content_cvpr_2016/papers/Liu_Deep_Relative_Distance_CVPR_2016_paper.pdf\]
Bags of Local Convolutional Features for Scalable Instance Search. Best Poster Award at ICMR 2016.
[https://imatge-upc.github.io/retrieval-2016-icmr/]
Group Invariant Deep Representations for Image Instance Retrieval
[http://arxiv.org/abs/1601.02093]
Natural Language Object Retrieval
[http://arxiv.org/abs/1511.04164]
Faster R-CNN Features for Instance Search
[http://imatge-upc.github.io/retrieval-2016-deepvision/]
Where to Focus: Query Adaptive Matching for Instance Retrieval Using Convolutional Feature Maps
[https://arxiv.org/abs/1606.06811]
Adversarial Training For Sketch Retrieval
[http://arxiv.org/abs/1607.02748]
DeepFashion: Powering Robust Clothes Recognition and Retrieval with Rich Annotations
[http://personal.ie.cuhk.edu.hk/~lz013/projects/DeepFashion.html\]
CNN Image Retrieval Learns from BoW: Unsupervised Fine-Tuning with Hard Examples
[http://cmp.felk.cvut.cz/~radenfil/projects/siamac.html\]
PicHunt: Social Media Image Retrieval for Improved Law Enforcement
[http://arxiv.org/abs/1608.00905]
The Sketchy Database: Learning to Retrieve Badly Drawn Bunnies
[http://sketchy.eye.gatech.edu/]
End-to-end Learning of Deep Visual Representations for Image Retrieval
[http://www.xrce.xerox.com/Research-Development/Computer-Vision/Learning-Visual-Representations/Deep-Image-Retrieval]
What Is the Best Practice for CNNs Applied to Visual Instance Retrieval?
[https://arxiv.org/abs/1611.01640]
AMC: Attention guided Multi-modal Correlation Learning for Image Search. CVPR 2017
[https://arxiv.org/abs/1704.00763]
Deep image representations using caption generators. ICME 2017
[https://arxiv.org/abs/1705.09142]
One-Shot Fine-Grained Instance Retrieval. ACM MM 2017
[https://arxiv.org/abs/1707.00811]
Selective Deep Convolutional Features for Image Retrieval. ACM MM 2017
[https://arxiv.org/abs/1707.00809]
Deep Binaries: Encoding Semantic-Rich Cues for Efficient Textual-Visual Cross Retrieval. ICCV 2017
[https://arxiv.org/abs/1708.02531]
Image2song: Song Retrieval via Bridging Image Content and Lyric Words. ICCV 2017
[https://arxiv.org/abs/1708.05851]
SIFT Meets CNN: A Decade Survey of Instance Retrieval
[http://arxiv.org/abs/1608.01807]
Image Retrieval with Deep Local Features and Attention-based Keypoints
[https://arxiv.org/abs/1612.05478]
Recent Advance in Content-based Image Retrieval: A Literature Survey. Wengang Zhou, Houqiang Li, and Qi Tian 2017
[https://arxiv.org/pdf/1706.06064.pdf]
Intelligent Image Retrieval Techniques: A Survey 2014
[http://www.sciencedirect.com/science/article/pii/S1665642314716098]
A survey on content based image retrieval. 2013
[http://ieeexplore.ieee.org/document/6496719/]
CVPR’16 Tutorial on Image Tag Assignment, Refinement and Retrieval
[http://www.lambertoballan.net/2016/06/cvpr16-tutorial-image-tag-assignment-refinement-and-retrieval/]
Content-based image retrieval tutorial by Joani Mitro
[https://arxiv.org/pdf/1608.03811.pdf]
Tutorial on Image Retrieval System, (IRS)
[http://da.biostr.washington.edu/~sigdemos/tutorial/tutorial.pdf\]
Deep Image Retrieval: Learning global representations for image search
[https://www.youtube.com/watch?v=yT52xDML6ys]
Image Instance Retrieval: Overview of state-of-the-art
[https://www.youtube.com/watch?v=EYq-rpaZn1o]
Neural Codes for Image Retrieval
[https://github.com/arbabenko/Spoc]
Natural Language Object Retrieval
[https://github.com/andrewliao11/Natural-Language-Object-Retrieval-tensorflow]
Bags of Local Convolutional Features for Scalable Instance Search
[https://github.com/imatge-upc/retrieval-2016-icmr]
Faster R-CNN Features for Instance Search
[https://github.com/imatge-upc/retrieval-2016-deepvision]
CNN Image Retrieval Learns from BoW: Unsupervised Fine-Tuning with Hard Examples
[http://ptak.felk.cvut.cz/personal/radenfil/siamac/siaMAC_code.tar.gz\]
Class-Weighted Convolutional Features for Visual Instance Search
[https://github.com/imatge-upc/retrieval-2017-cam]
Hervé Jégou
[http://people.rennes.inria.fr/Herve.Jegou/]
Andrew Zisserman
[https://www.robots.ox.ac.uk/~az/\]
Qi Tian
[http://www.cs.utsa.edu/~qitian/\]
Artem Babenko
[https://www.hse.ru/en/org/persons/133709478]
Corel 1000 and 10,000 图像数据库
[http://wang.ist.psu.edu/docs/related/]
The COREL Database for Content based Image Retrieval
[https://sites.google.com/site/dctresearch/Home/content-based-image-retrieval]
Corel-5K and Corel -10K Datasets该页面下面给出了图片的链接,可以用python写个脚本把它们爬下来。
[http://www.ci.gxnu.edu.cn/cbir/Dataset.aspx]
INSTRE,中科院计算所弄的一个数据库28543张图片,还有他们做的web检索系统ISIA。
[http://vipl.ict.ac.cn/isia/instre/]
MIRFLICKR 1M数据库,100多g.
[http://press.liacs.nl/mirflickr/mirdownload.html]
Image Similarity Triplet Dataset
[http://users.eecs.northwestern.edu/~jwa368/my_data.html\]
INRIA Holidays 该数据集是Herve Jegou研究所经常度假时拍的图片(风景为主),一共1491张图,500张query(一张图一个group)和对应着991张相关图像,已提取了128维的SIFT点4455091个,visual dictionaries来自Flickr60K.
[http://lear.inrialpes.fr/~jegou/data.php\]
Oxford Buildings Dataset,5k Dataset images,有5062张图片,是牛津大学VGG小组公布的,在基于词汇树做检索的论文里面,这个数据库出现的频率极高。
[http://www.robots.ox.ac.uk/~vgg/data/oxbuildings/\]
Oxford Paris,The Paris Dataset,oxford的VGG组从Flickr搜集了6412张巴黎旅游图片,包括Eiffel Tower等。
[http://www.robots.ox.ac.uk/~vgg/data/parisbuildings/\]
201Books and CTurin180 The CTurin180 and 201Books Data Sets,2011.5,Telecom Italia提供于Compact Descriptors for Visual Search,该数据集包括:Nokia E7拍摄的201本书的封面图片(多视角拍摄,各6张),共1.3GB; Turin市180个建筑的视频图像,拍摄的camera有Galaxy S、iPhone 3、Canon A410、Canon S5 IS,共2.7GB
[http://pacific.tilab.com/www/datasets/]
Stanford Mobile Visual Search,Stanford Mobile Visual Search Dataset,2011.2,stanford提供,包括8种场景,如CD封面、油画等,每组相关图片都是采自不同相机(手机),所有场景共500张图;以后又发布了一个patch数据集,Compact Descriptors for Visual Search Patches Dataset,校对了相同patch。
[https://purl.stanford.edu/rb470rw0983]
UKBench,UKBench database,2006.7,Henrik Stewénius在他CVPR06文章中提供的数据集,图像都为640x480,每个group有4张图,文件接近2GB,提供visual words。
[http://vis.uky.edu/~stewe/ukbench/\]
初步版本,水平有限,有错误或者不完善的地方,欢迎大家提建议和补充,会一直保持更新,敬请关注http://www.zhuanzhi.ai 和关注专知公众号,获取最新AI相关知识
特别提示-专知图像检索主题:
获取完整版查看,最新更新知识资料,请PC登录www.zhuanzhi.ai或者点击阅读原文,注册登录,顶端搜索“图像检索” 主题,查看获得专知荟萃全集知识等资料,直接PC端访问体验更佳!如下图所示~
此外,请关注专知公众号(扫一扫最下面专知二维码,或者点击上方蓝色专知),
后台回复“图像检索”或者“CBIR” 就可以在手机端获取专知图像检索知识资料pdf下载和查看链接地址,直接打开荟萃资料的链接地址~~
往期专知荟萃知识资料全集获取(关注本公众号-专知,获取下载链接),请查看:
【专知荟萃01】深度学习知识资料大全集(入门/进阶/论文/代码/数据/综述/领域专家等)(附pdf下载)
【专知荟萃02】自然语言处理NLP知识资料大全集(入门/进阶/论文/Toolkit/数据/综述/专家等)(附pdf下载)
【专知荟萃03】知识图谱KG知识资料全集(入门/进阶/论文/代码/数据/综述/专家等)(附pdf下载)
【专知荟萃04】自动问答QA知识资料全集(入门/进阶/论文/代码/数据/综述/专家等)(附pdf下载)
【专知荟萃05】聊天机器人Chatbot知识资料全集(入门/进阶/论文/软件/数据/专家等)(附pdf下载)
【专知荟萃06】计算机视觉CV知识资料大全集(入门/进阶/论文/课程/会议/专家等)(附pdf下载)
【专知荟萃07】自动文摘AS知识资料全集(入门/进阶/代码/数据/专家等)(附pdf下载)
【专知荟萃08】图像描述生成Image Caption知识资料全集(入门/进阶/论文/综述/视频/专家等)
【专知荟萃09】目标检测知识资料全集(入门/进阶/论文/综述/视频/代码等)
【专知荟萃10】推荐系统RS知识资料全集(入门/进阶/论文/综述/视频/代码等)
【专知荟萃11】GAN生成式对抗网络知识资料全集(理论/报告/教程/综述/代码等)
【专知荟萃12】信息检索 Information Retrieval 知识资料全集(入门/进阶/综述/代码/专家,附PDF下载)
【专知荟萃13】工业学术界用户画像 User Profile 实用知识资料全集(入门/进阶/竞赛/论文/PPT,附PDF下载)
【专知荟萃14】机器翻译 Machine Translation知识资料全集(入门/进阶/综述/视频/代码/专家,附PDF下载)
请扫描小助手,加入专知人工智能群,交流分享~
-END-
欢迎使用专知
专知,一个新的认知方式!专注在人工智能领域为AI从业者提供专业可信的知识分发服务, 包括主题定制、主题链路、搜索发现等服务,帮你又好又快找到所需知识。
使用方法>>访问www.zhuanzhi.ai, 或点击文章下方“阅读原文”即可访问专知
中国科学院自动化研究所专知团队
@2017 专知
专 · 知
关注我们的公众号,获取最新关于专知以及人工智能的资讯、技术、算法、深度干货等内容。扫一扫下方关注我们的微信公众号。
点击“阅读原文”,使用专知!