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jinfagang / awesome_transformer

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A curated list of transformer learning materials, shared blogs, technical reviews.

Awesome Transformer Awesome

A curated list of all kinds of transformers, also include some personal experiment results, applications and thoughts from industry.

Updates

  • 2021.02.20: I opened github discuss panel, we can start discuss about transformers there.

Blogs

Standalone Github Repos

arXiv papers

  • Training Vision Transformers for Image Retrieval[paper]
  • [TransReID] TransReID: Transformer-based Object Re-Identification[paper]
  • [VTN] Video Transformer Network[paper]
  • [T2T-ViT] Tokens-to-Token ViT: Training Vision Transformers from Scratch on ImageNet [paper] [code]
  • [BoTNet] Bottleneck Transformers for Visual Recognition [paper]
  • [CPTR] CPTR: Full Transformer Network for Image Captioning [paper]
  • Learn to Dance with AIST++: Music Conditioned 3D Dance Generation [paper] [code]
  • [Trans2Seg] Segmenting Transparent Object in the Wild with Transformer [paper] [code]
  • [SMCA] Fast Convergence of DETR with Spatially Modulated Co-Attention [paper]
  • Investigating the Vision Transformer Model for Image Retrieval Tasks [paper]
  • [Trear] Trear: Transformer-based RGB-D Egocentric Action Recognition [paper]
  • [VisTR] End-to-End Video Instance Segmentation with Transformers [paper]
  • [VisualSparta] VisualSparta: Sparse Transformer Fragment-level Matching for Large-scale Text-to-Image Search [paper]
  • [TrackFormer] TrackFormer: Multi-Object Tracking with Transformers [paper]
  • [LETR] Line Segment Detection Using Transformers without Edges [paper]
  • [TAPE] Transformer Guided Geometry Model for Flow-Based Unsupervised Visual Odometry [paper]
  • [TRIQ] Transformer for Image Quality Assessment [paper] [code]
  • [TransTrack] TransTrack: Multiple-Object Tracking with Transformer [paper] [code]
  • [SETR] Rethinking Semantic Segmentation from a Sequence-to-Sequence Perspective with Transformers [paper] [code]
  • [TransPose] TransPose: Towards Explainable Human Pose Estimation by Transformer [paper]
  • [DeiT] Training data-efficient image transformers & distillation through attention [paper]
  • [Pointformer] 3D Object Detection with Pointformer [paper]
  • [ViT-FRCNN] Toward Transformer-Based Object Detection [paper]
  • [Taming-transformers] Taming Transformers for High-Resolution Image Synthesis [paper] [code]
  • [SceneFormer] SceneFormer: Indoor Scene Generation with Transformers [paper]
  • [PCT] PCT: Point Cloud Transformer [paper]
  • Transformer Interpretability Beyond Attention Visualization[paper] [code]
  • [METRO] End-to-End Human Pose and Mesh Reconstruction with Transformers [paper]
  • [PointTransformer] Point Transformer[paper]
  • [PED] DETR for Pedestrian Detection[paper]
  • [UP-DETR] UP-DETR: Unsupervised Pre-training for Object Detection with Transformers[paper]
  • [LAMBDANETWORKS] MODELING LONG-RANGE INTERACTIONS WITHOUT ATTENTION[paper] [code]
  • [C-Tran] General Multi-label Image Classification with Transformers[paper]
  • [TSP-FCOS] Rethinking Transformer-based Set Prediction for Object Detection[paper]
  • [IPT] Pre-Trained Image Processing Transformer[paper]
  • [ACT] End-to-End Object Detection with Adaptive Clustering Transformer[paper]
  • [VTs] Visual Transformers: Token-based Image Representation and Processing for Computer Vision[paper]

2021

  • [Vision Transformer] An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale(ICLR)[paper] [code]
  • [Deformable DETR] Deformable DETR: Deformable Transformers for End-to-End Object Detection(ICLR)[paper] [code]
  • [LSTR] End-to-end Lane Shape Prediction with Transformers(WACV) [paper] [code]

2020

  • [DETR] End-to-End Object Detection with Transformers (ECCV) [paper] [code]
  • [FPT] Feature Pyramid Transformer(CVPR) [paper] [code]
  • [TTSR] Learning Texture Transformer Network for Image Super-Resolution(CVPR) [paper] [code]

Reference

  1. origin

Copyright

Collected by Lucas Jin. 2021

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