This repo contains notes and short summaries of some ML related papers I come across, organized by subjects and the summaries are in the form of PDFs.
- Selfie: Self-supervised Pretraining for Image Embedding (2019): [Paper] [Notes]
- Self-Supervised Representation Learning by Rotation Feature Decoupling (2019): [Paper] [Notes]
- Revisiting Self-Supervised Visual Representation Learning (2019): [Paper] [Notes]
- AET vs. AED: Unsupervised Representation Learning by Auto-Encoding Transformations rather than Data (2019): [Paper] [Notes]
- Boosting Self-Supervised Learning via Knowledge Transfer (2018): [Paper] [Notes]
- Self-Supervised Feature Learning by Learning to Spot Artifacts (2018): [Paper] [Notes]
- Unsupervised Representation Learning by Predicting Image Rotations (2018): [Paper] [Notes]
- Cross Pixel Optical-Flow Similarity for Self-Supervised Learning (2018): [Paper] [Notes]
- Multi-task Self-Supervised Visual Learning (2017): [Paper] [Notes]
- Split-Brain Autoencoders: Unsupervised Learning by Cross-Channel Prediction (2017): [Paper] [Notes]
- Colorization as a Proxy Task for Visual Understanding (2017): [Paper] [Notes]
- Unsupervised Learning of Visual Representations by Solving Jigsaw Puzzles (2017): [Paper] [Notes]
- Unsupervised Visual Representation Learning by Context Prediction (2016): [Paper] [Notes]
- Colorful image colorization (2016): [Paper] [Notes]
- Learning visual groups from co-occurrences in space and time (2015): [Paper] [Notes]
- Discriminative unsupervised feature learning with exemplar convolutional neural networks (2015): [Paper] [Notes]
- Dual Student: Breaking the Limits of the Teacher in Semi-supervised Learning (2019): [Paper] [Notes]
- S4L: Self-Supervised Semi-Supervised Learning (2019): [Paper] [Notes]
- Semi-Supervised Learning by Augmented Distribution Alignment (2019): [Paper] [Notes]
- MixMatch: A Holistic Approach toSemi-Supervised Learning (2019): [Paper] [Notes]
- Unsupervised Data Augmentation (2019): [Paper] [Notes]
- Interpolation Consistency Training forSemi-Supervised Learning (2019): [Paper] [Notes]
- Deep Co-Training for Semi-Supervised Image Recognition (2018): [Paper] [Notes]
- Unifying semi-supervised and robust learning by mixup (2019): [Paper] [Notes]
- Realistic Evaluation of Deep Semi-Supervised Learning Algorithms (2018): [Paper] [Notes]
- Semi-Supervised Sequence Modeling with Cross-View Training (2018): [Paper] [Notes]
- Virtual Adversarial Training:A Regularization Method for Supervised andSemi-Supervised Learning (2017): [Paper] [Notes]
- Mean teachers are better role models (2017): [Paper] [Notes]
- Temporal Ensembling for Semi-Supervised Learning (2017): [Paper] [Notes]
- Semi-Supervised Learning with Ladder Networks (2015): [Paper] [Notes]
- Invariant Information Clustering for Unsupervised Image Classification and Segmentation (2019): [Paper] [Notes]
- Deep Clustering for Unsupervised Learning of Visual Feature (2018): [Paper] [Notes]
- DeepLabv3+: Encoder-Decoder with Atrous Separable Convolution (2018): [Paper] [Notes]
- Large Kernel Matter, Improve Semantic Segmentation by Global Convolutional Network (2017): [Paper] [Notes]
- Understanding Convolution for Semantic Segmentation (2018): [Paper] [Notes]
- Rethinking Atrous Convolution for Semantic Image Segmentation (2017): [Paper] [Notes]
- RefineNet: Multi-path refinement networks for high-resolution semantic segmentation (2017): [Paper] [Notes]
- Pyramid Scene Parsing Network (2017): [Paper] [Notes]
- SegNet: A Deep ConvolutionalEncoder-Decoder Architecture for ImageSegmentation (2016): [Paper] [Notes]
- ENet: A Deep Neural Network Architecture for Real-Time Semantic Segmentation (2016): [Paper] [Notes]
- Attention to Scale: Scale-aware Semantic Image Segmentation (2016): [Paper] [Notes]
- Deeplab: semantic image segmentation with DCNN, atrous convs and CRFs (2016): [Paper] [Notes]
- U-Net: Convolutional Networks for Biomedical Image Segmentation (2015): [Paper] [Notes]
- Fully Convolutional Networks for Semantic Segmentation (2015): [Paper] [Notes]
- Hypercolumns for object segmentation and fine-grained localization (2015): [Paper] [Notes]
- Box-driven Class-wise Region Masking and Filling Rate Guided Loss for Weakly Supervised Semantic Segmentation (2019): [Paper] [Notes]
- FickleNet: Weakly and Semi-supervised Semantic Image Segmentation using Stochastic Inference (2019): [Paper] [Notes]
- Weakly-Supervised Semantic Segmentation Network with Deep Seeded Region Growing (2018): [Paper] [Notes]
- Learning Pixel-level Semantic Affinity with Image-level Supervision for Weakly Supervised Semantic Segmentation (2018): [Paper] [Notes]
- Object Region Mining with Adversarial Erasing: A Simple Classification to Semantic Segmentation Approach (2018): [Paper] [Notes]
- Revisiting Dilated Convolution: A Simple Approach for Weakly- and Semi- Supervised Semantic Segmentation (2018): [Paper] [Notes]
- Tell Me Where to Look: Guided Attention Inference Network (2018): [Paper] [Notes]
- Semi Supervised Semantic Segmentation Using Generative Adversarial Network (2017): [Paper] [Notes]
- Decoupled Deep Neural Network for Semi-supervised Semantic Segmentation (2015): [Paper] [Notes]
- Weakly- and Semi-Supervised Learning of a DCNN for Semantic Image Segmentation (2015): [Paper] [Notes]
- Attention Branch Network: Learning of Attention Mechanism for Visual Explanation (2019): [Paper] [Notes]
- Attention-based Dropout Layer for Weakly Supervised Object Localization (2019): [Paper] [Notes]
- Paying More Attention to Attention: Improving the Performance of Convolutional Neural Networks via Attention Transfer (2016): [Paper] [Notes]
- Pixels to Graphs by Associative Embedding (2017): [Paper] [Notes]
- Associative Embedding: End-to-End Learning forJoint Detection and Grouping (2017): [Paper] [Notes]
- Interaction Networks for Learning about Objects , Relations and Physics (2016): [Paper] [Notes]
- DeepWalk: Online Learning of Social Representation (2014): [Paper] [Notes]
- The graph neural network model (2009): [Paper] [Notes]
- dhSegment: A generic deep-learning approach for document segmentation (2018): [Paper] [Notes]
- Learning to extract semantic structure from documents using multimodal fully convolutional neural networks (2017): [Paper] [Notes]
- Page Segmentation for Historical Handwritten Document Images Using Conditional Random Fields (2016): [Paper] [Notes]
- ICDAR 2015 competition on text line detection in historical documents (2015): [Paper] [Notes]
- Handwritten text line segmentation using Fully Convolutional Network (2017): [Paper] [Notes]
- Deep Neural Networks for Large Vocabulary Handwritten Text Recognition (2015): [Paper] [Notes]
- Page Segmentation of Historical Document Images with Convolutional Autoencoders (2015): [Paper] [Notes]
- A typed and handwritten text block segmentation system for heterogeneous and complex documents (2012): [Paper] [Notes]
- Document layout analysis, Classical approaches (1992:2001): [Paper] [Notes]
- Page Segmentation for Historical Document Images Based on Superpixel Classification with Unsupervised Feature Learning (2016): [Paper] [Notes]
- Paragraph text segmentation into lines with Recurrent Neural Networks (2015): [Paper] [Notes]
- A comprehensive survey of mostly textual document segmentation algorithms since 2008 (2017 ): [Paper] [Notes]
- Convolutional Neural Networks for Page Segmentation of Historical Document Images (2017): [Paper] [Notes]
- ICDAR2009 Page Segmentation Competition (2009): [Paper] [Notes]
- Amethod for combining complementary techniques for document image segmentation (2009): [Paper] [Notes]