까먹으면 다시 보려고 정리합니다.
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Lenet-5(1998), PyTorch Code [Google Colab / Blog Posting]
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AlexNet(2012), PyTorch Code [Google Colab / Blog Posting]
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PyTorch 구현 코드로 살펴보는 Knowledge Distillation(2014), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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GoogLeNet(2014), PyTorch Code [Google Colab / Blog Posting]
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VGGNet(2014), PyTorch Code [Google Colab / Blog Posting]
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ResNet(2015), PyTorch Code [Google Colab / Blog Posting]
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Pre-Activation ResNet(2016), PyTorch Code [Google Colab / Blog Posting]
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WRN, Wide Residual Networks(2016), PyTorch Code [Google Colab / Blog Posting]
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Inception-v4(2016), PyTorch Code [Google Colab / Blog Posting]
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DenseNet(2017), PyTorch Code [Google Colab / Blog Posting]
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Xception(2017), PyTorch Code [Google Colab / Blog Posting]
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MobileNetV1(2017), PyTorch Code [Google Colab / Blog Posting]
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ResNext(2017), PyTorch Code [Google Colab / Blog Posting]
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Residual Attention Network(2017), PyTorch Code [Google Colab / Blog Posting]
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Non-local Neural Network(2017), paper [pdf]
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SENet(2018), PyTorch Code [Google Colab / Blog Posting]
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CBAM(2018), paper [pdf]
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EfficientNet(2019), PyTorch Code [Google Colab / Blog Posting]
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SKNet(2019), paper [pdf]
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Noise or Signal: The Role of Image Backgrounds in Object Recognition(2020), paper [pdf]
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VIT(2020), paper [pdf], PyTorch Code [Google Colab / Blog Posting]
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Deit(2020), paper [pdf]
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Knowledge distillation: A good teacher is patient and consitent(2021), paper [pdf]
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MLP-Mixer(2021), paper [odf]
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CeiT(2021), paper [pdf]
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Early Convolutions Help Transformers See Better(2021), paper [pdf]
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BoTNet(2021), paper [pdf]
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Conformer(2021), paper [pdf]
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Delving Deep into the Generalization of Vision Transformers under Distribution Shifts(2021), paper [pdf]
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Scaling Vision Transformers(2021), paper [pdf]
 
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RetinaNet(2017) PyTorch Code [Google Colab / Blog Posting]
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YOLO v3(2018), PyTorch Code [Google Colab / Blog Posting]
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CenterNet(2019), paper [pdf]
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Gaussian YOLOv3(2019), paper [pdf]
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FCOS(2019), paper [pdf]
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YOLOv4(2020), paper [pdf]
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EfficientDet(2020), paper [pdf]
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CSPNet(2020), paper [pdf]
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DIoU Loss(2020), paper [pdf], Code
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CircleNet(2020), paper [pdf]
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DETR(2020), paper [pdf]
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Deformable DETR(2020), paper [pdf]
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Localization Distillation for Dense Object Detection(2102)
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CenterNet2(2021), paper [pdf]
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Swin Transformer(2021), paper [pdf]
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YOLOr(2021), paper [pdf]
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YOLOS(2021), paper [pdf]
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Dynamic Head, Unifying Object Detection Heads with Attention(2021), paper [pdf]
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Pix2Seq(2021), paper [pdf]
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Anchor DETR, Query Design for Transformer-Based Object Detection(2021), paper [pdf]
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DAB-DETR, Dynamic Anchor Boxes are Better Queries for DETR(2022), paper [pdf]
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DN-DETR, Accelerate DETR Training by Introducing Query DeNoising(2022), paper [pdf]
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DINO, DETR with Imporved DeNoising Anchor Boxes for End-to-End Object Detection(2022), paper [pdf]
 
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DilatedNet(2015), paper [pdf]
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PyTorch 구현 코드로 살펴보는 SegNet(2015), paper [pdf]
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PSPNet(2016), paper [pdf]
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DeepLabv3(2017), paper [pdf]
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PANet(2018), paper [pdf]
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Panoptic Segmentation(2018), paper [pdf]
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Weakly- and Semi-Supervised Panoptic Segmentation(2018), paper [pdf]
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Panoptic Segmentation with a Joint Semantic and Instance Segmentation Network(2018), paper [pdf]
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Single Network Panoptic Segmentation for Street Scene Understanding(2019), paper [pdf]
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IMP: Instance Mask Projection for High Accuracy Semantic Segmentation of Things(2019), paper [pdf]
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Object-Contextual Representations for Semantic Segmentation(2019), paper [pdf]
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CondInst, Conditional Convolution for Instance Segmentation(2020), paper [pdf]
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Max-DeepLab, End-to-End Panoptic Segmentation wtih Mask Transformers, paper [pdf]
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MaskFormer, Per-Pixel Classification is Not All You Need for Semantic Segmentation(2021), paper [pdf]
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Open-World Entity Segmentation(2021), paper [pdf]
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Prompt based Multi-modal Image Segmentation(2021), paper [pdf]
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DenseCLIP, Language-Guided Dense Prediction with Context-Aware Prompting, paper [pdf]
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Mask2Former, Masked-attention Mask Transformer for Universal Image Segmentation(2021)
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SeMask<, Semantically Masked Transformers for Semantic Segmentation(2021)
 
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Constrative Loss(2006), paper [pdf]
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Exemplar-CNN(2014), paper [pdf]
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Unsupervised Learning of Visual Representation using Videos, paper [pdf]
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Context Prediction(2015), paper [pdf]
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Jigsaw Puzzles(2016), paper [odf]
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Colorful Image Coloriztion(2016), paper [pdf]
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Deep InfoMax(2018), paper [pdf]
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Deep Cluster(2018), paper [pdf]
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Rotation(2018), paper [pdf]
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Unsupervised Feature Learning via Non-Parametric Instance Discrimination(2018), paper [pdf]
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ADMIN(2019), paper [pdf]
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Contrastive Multiview Coding(2019), paper [pdf]
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MoCo(2019), paper [pdf]
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SeLa(2019), paper [pdf]
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SimCLR(2020), paper [pdf]
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MoCov2(2020), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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SimSiam(2020), paper [pdf]
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Understanding the Behaviour of Contrastive Loss(2020), paper [pdf]
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BYOL(2020), paper [pdf]
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SwAV(2020), paper [pdf]
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SimCLRv2(2020), paper [pdf]
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Supervised Contrastive Learning(2020), paper [pdf]
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DenseCL(2020), Dense Contrastive Learning for Self-Supervised Visual Pre-Training, paper [pdf]
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DetCo(2021), paper [pdf
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SCRL(2021), paper [pdf]
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MoCov3(2021), paper [pdf]
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DINO(2021), paper [pdf]
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EsViT(2021), paper [pdf]
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Masked Autoencoders Are Scalable Vision Learners(2021), paper [pdf]
 
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Self-supervised Learning for Video Correspondence Flow(2019), paper [pdf]
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Learning Correspondence from the Cycle-consistency of Time(2019), paper [pdf]
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Joint-task Self-supervised Learning for Temporal Correspondence(2019), paper [pdf]
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Space-Time Correspondence as a Contrastive Random Walk(2020), paper [pdf]
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Contrastive Transformation for Self-supervised Correspondence Learning(2020), paper [pdf]
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Mining Better Samples for Contrastive Learning of Temporal Correspondence(2021), paper [pdf]
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Contrastive Learning of Image Representations with Cross-Video Cycle-Consistency, paper [pdf]
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ViCC(2021), paper [pdf]
 
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Temporal ensembling for semi-supervised learning(2016) , paper [pdf]
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Consistency-based Semi-supervised Learning for Object Detection(2019), paper [pdf]
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PseudoSeg, Designing Pseudo Labels for Semantic Segmentation(2020), paper [pdf]
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ReCo, Bootstrapping Semantic Segmentation with Regional Contrast(2021), paper [pdf]
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Semi-Supervised Semantic Segmentation with Cross Pseudo Supervision(2021), paper [pdf]
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Soft Teacher(2021), End-to-End Semi-Supervised Object Detection with Soft Teacher, paper [pdf]
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CaSP(2021), Class-agnostic Semi-Supervised Pretraining for Detection & Segmentation, paper [pdf]
 
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Class Activation Map(CAM), Learning Deep Features for Discriminative Localization, paper [pdf]
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Grad-CAM, Visual Explanations from Deep Networks via Gradient based Localization, paper [pdf]
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Zoom-CAM, Generating Fine-grained Pixel Annotations from Image Labels(2020), paper [pdf]
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GETAM: Gradient-weighted Element-wise Transformer Attention Map for Weakly-supervised Semantic Segmentation(2021), paper [pdf]
 
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Learning Spatiotemporal Features with 3D Convolutional Network(2014), paper [pdf]
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Quo Vadis, Action Recognition? A New Model and the Kinetics Dataset(2017), paper [pdf]
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GCNet(2019), paper [pdf]
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Drop an Octave(2019), paper [pdf]
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TimeSformer(2021), paper [pdf], Youtube [link]
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ViViT(2021), paper [pdf]
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MViT(2021), paper [pdf]
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X-ViT(2021), paper [pdf]
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Video Swin Transformer(2021), paper [pdf]
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Towards Training Stronger Video Vision Transformers for EPIC-KITCHENS-100 Action Recognition(2021), paper [pdf]
 
- VisTR(2020), paper [pdf]
 
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DeViSE, A Deep Visual-Semantic Embedding Model(2013), paper [pdf]
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Zero-shot Learning via Shared-Reconstruction-Graph Pursuit(2017), paper [pdf]
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A Generative Adversarial Approach for Zero-Shot Learning from Noisy Texts(2017), paper [pdf]
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f-VAEGAN-D2, A Feature Generating Framework for Any Shot Learning(2019), paper [pdf]
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TCN(2019), Transferable Contrastive Network for Generalized Zero-Shot Learning, paper [pdf]
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Rethinking Zero-Shot Learning: A Conditional Visual Classification Perspective(2019), paper [pdf]
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Convolutional Prototype Learning for Zero-Shot Recognition(2019), paper [pdf]
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DRN, Class-Prototype Discriminative Network for Generalized Zero-Shot Learning(2020), paper [pdf]
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DAZLE(2020), Fine-Grained Generalized Zero-Shot Learning via Dense Attribute-Based Attention, paper [pdf]
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IPN(2021), Isometric Propagation Network for Generalized Zero-Shot Learning, paper [pdf]
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CE-GZSL(2021), Contrastive Embedding for Generalized Zero-Shot Learning, paper [pdf]
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Task-Independent Knowledge Makes for Transferable Represenatations for Generalized Zero-Shot Learning(2021), paper [pdf]
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Zero-Shot Learning via Contrastive Learning on Dual Knowledge Graphs(2021), paper [pdf]
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FREE: Feature Refinement for Generalized Zero-Shot Learning(2021), paper [pdf]
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ALIGN(2021), Scaling Up Visual and Vision-Language Representation Learning with Noisy Text Supervision, paper [pdf]
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LiT: Zero-Shot Transfer with Locked-image Text Tuning(2021), paper [pdf]
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Generalized Category Discovery(2022), paper [pdf]
 
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Synthesizing the Unseen for Zero-shot Object Detection(2020), paper [pdf]
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ViLD(2021), Open-Vocabulary Object Detection via Vision and Language Knowledge Distillation, paper [pdf]
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Robust Region Feature Synthesizer for Zero-Shot Object Detection(2022), paper [pdf]
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Detic(2022), Detecting Twenty-thousand Classes using Image-level Supervision, paper [pdf]
 
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Zero-Shot Semantic Segmentation(2019), paper [pdf]
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Semantic Projection Network for Zero- and Few-Label Semantic Segmentation(2020), paper [pdf]
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Learning unbiased zero-shot semantic segmentation networks via transductive transfer(2020), paper [pdf]
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A review of Generalized Zero-Shot Learning Methods(2020), paper [pdf]
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Consistent Structural Relation Learning for Zero-Shot Segmentation(2020, paper [pdf]
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Uncertainty-Aware Learning for Zero-Shot Semantic Segmentation(2020), paper [pdf]
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Context-aware Feature Generation for Zero-shot Semantic Segmentation(2020), paper [pdf]
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Recursive Training for Zero-Shot Semantic Segmentation(2021), paper [pdf]
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Zero-Shot Instance Segmentation(2021), paper [pdf]
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A Closer Look at Self-training for Zero-Label Segmantic Segmentation(2021), paper [pdf]
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Prototypical Matching and Open Seg Rejection for Zero-Shot Semantic Segmentation(2021), paper [pdf]
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SIGN(2021), Spatial-information Incorporated Generative Network for GGeneralized Zero-shot Semantic Segmentation, paper [pdf]
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Exploiting a Joint Embedding Space for Generalized Zero-Shot Semantic Segmentation(2021), paper [pdf]
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Zero-Shot Semantic Segmentation via Spatial and Multi-Scale Aware Visual Class Embedding, paper [pdf]
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DenseCLIP: Extract Free Dence Labels from CLIP(2021), paper [pdf]
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Decoupling Zero-Shot Semantic Segmentation(2021), paper [pdf]
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A Simple Baseline for Zero-Shot Semantic Segmentation with Pre-trained Vision-language Model(2021), paper [pdf]
 
cv
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CPT, Colorful Prompt Tuning for Pre-trained Vision-Language Models
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CLIP-Adapter, Better Vision-Language Models with Feature Adapters(2021)
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Tip-Adapter, Training-free CLIP-Adapter for Better Vision-Language Modeling
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DenseCLIP, Language-Guided Dense Prediction with Context-Aware Prompting(2021)
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Prompting Visual-Language Models for Efficient Video Understanding, paper [pdf]
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Conditianl Prompt Learning for Visiona-Language Models, paper [pdf]
 
nlp
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PyTorch 구현 코드로 살펴보는 SRCNNe(2014), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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FlowNet(2015), paper [pdf]
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PWC-Net(2017), paper [pdf]
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Residual Non-local Attention Networks for Image Restoration(2019), paper [pdf]
 
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Convolutional-Recursive Deep Learning for 3D Object Classification(2012), paper [pdf]
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PointNet(2016), paper [pdf]
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Set Transformer(2018), paper [pdf]
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Centroid Transformer(2021), paper [pdf]
 
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PyTorch 코드로 살펴보는 Seq2Seq(2014), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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PyTorch 코드로 살펴보는 Attention(2015), paper [odf]
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PyTorch 코드로 살펴보는 Convolutional Sequence to Sequence Learning(2017), paper [pdf]
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PyTorch 코드로 살펴보는 Transforemr(2017), paper [pdf]
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BERT(2018), paper [pdf]
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ELECTRA: Pre-training Text Encoders as Discriminators Rather Than Generators(2020), paper [pdf]
 
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PyTorch 구현 코드로 살펴보는 GAN(2014), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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PyTorch 구현 코드로 살펴보는 CGAN(2014), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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PyTorch 구현 코드로 살펴보는 DCGAN(2015), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
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PyTorch 구현 코드로 살펴보는 Pix2Pix(2016), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
 
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Class-Balanced Loss(2019), paper [pdf]
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Seesaw Loss for Long-Tailed Instance Segmentation(2020), paper [pdf]
 
- Pytorch 구현 코드로 살펴보는 FaceNet(2015), paper [pdf]
 
- Deep Compression(2016), paper [pdf]
 
- Mish(2019), paper [pdf]
 
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CutMix(2019), paper [pdf]
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Learning Data Augmentation Strategies for Object Detection(2019, paper [pdf]
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Simple Copy-Paste is a Strong Data Augmentation Method for Instance Segmentation(2020), paper [pdf]
 
- PyTorch 구현 코드로 살펴보는 A Neural Algorithm of Artistic Style(2016), PyTorch Code [Google Colab / Blog Posting], paper [pdf]
 
- DropBlock(2018), paper [pdf]
 
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Group Normalization(2018), paper [pdf]
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Cross iteration BN(2020), paper [pdf]