Some great or awesome repositories on github
-
awesome-deep-vision (Strongly recommended!!!)
- "A curated list of deep learning resources for computer vision, inspired by awesome-php and awesome-computer-vision."
- Maintainers - Jiwon Kim, Heesoo Myeong, Myungsub Choi, Jung Kwon Lee, Taeksoo Kim
- repo link
- local copy (may not be updated timely)
-
awesome-artificial-intelligence:
- "A curated list of Artificial Intelligence (AI) courses, books, video lectures and papers."
- Maintainer: [email protected]
- repo link
- local copy (may not be updated timely)
-
awesome-computer-vision
- "A curated list of awesome computer vision resources"
- Maintainer: [email protected]
- repo link
- local copy (may not be updated timely)
-
awesome-deep-learning-papers
- "A curated list of the most cited deep learning papers (since 2012)"
- "We believe that there exist classic deep learning papers which are worth reading regardless of their application domain. Rather than providing overwhelming amount of papers, We would like to provide a curated list of the awesome deep learning papers which are considered as must-reads in certain research domains."
- Maintainer: terryum
- repo link
- local copy (may not be updated timely)
-
awesome-machine-learning
- "A curated list of awesome machine learning frameworks, libraries and software (by language). Inspired by awesome-php."
- Maintainer: josephmisiti
- repo link
- local copy (may not be updated timely)
-
awesome-rnn
- "A curated list of resources dedicated to recurrent neural networks (closely related to deep learning)."
- Maintainers - Myungsub Choi, Taeksoo Kim, Jiwon Kim
- repo link
- local copy (may not be updated timely)
-
awesome-random-forest
- "Random Forest - a curated list of resources regarding tree-based methods and more, including but not limited to random forest, bagging and boosting."
- Maintainer: kjw0612
- repo link
- local copy (may not be updated timely)
-
Deep-Learning-Papers-Reading-Roadmap
- "If you are a newcomer to the Deep Learning area, the first question you may have is "Which paper should I start reading from?" Here is a reading roadmap of Deep Learning papers!"
- Maintainer: songrotek
- repo link
- local copy (may not be updated timely)
-
AdversarialNetsPapers
- "The classical papers and codes about generative adversarial nets"
- Maintainer: zhangqianhui
- repo link
- local copy (may not be updated timely)
-
Classification
-
[paper]
-
[project/code/model]
-
[dataset]
-
-
Detection
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Face Detection
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Face Recognition
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Facical Landmarks/Keypoints detection
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Age/Gender Recognition
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Emotion Recognition
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Pulp/Porn/NSFW(Not Suitable For Work) Content Recognition
-
[paper]
-
[project/code/model]
-
[dataset]
-
- Terror Content Recognition
-
[paper]
-
[project/code/model]
-
[dataset]
-
-
[paper]
-
[project/code/model]
-
[dataset]
-
[paper]
-
[project/code/model]
-
[dataset]