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dmlR package for Distance Metric Learning
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TCEThis repository contains the code implementation used in the paper Temporally Coherent Embeddings for Self-Supervised Video Representation Learning (TCE).
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Pytorch Image RetrievalA PyTorch framework for an image retrieval task including implementation of N-pair Loss (NIPS 2016) and Angular Loss (ICCV 2017).
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advrankAdversarial Ranking Attack and Defense, ECCV, 2020.
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visual-compatibilityContext-Aware Visual Compatibility Prediction (https://arxiv.org/abs/1902.03646)
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HardnetHardnet descriptor model - "Working hard to know your neighbor's margins: Local descriptor learning loss"
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Dml cross entropyCode for the paper "A unifying mutual information view of metric learning: cross-entropy vs. pairwise losses" (ECCV 2020 - Spotlight)
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symmetrical-synthesisOfficial Tensorflow implementation of "Symmetrical Synthesis for Deep Metric Learning" (AAAI 2020)
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TreeRepLearning Tree structures and Tree metrics
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triplet-loss-pytorchHighly efficient PyTorch version of the Semi-hard Triplet loss ⚡️
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finetunerFinetuning any DNN for better embedding on neural search tasks
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proxy-synthesisOfficial PyTorch implementation of "Proxy Synthesis: Learning with Synthetic Classes for Deep Metric Learning" (AAAI 2021)
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Prototypical NetworksCode for the NeurIPS 2017 Paper "Prototypical Networks for Few-shot Learning"
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Npair loss pytorchImproved Deep Metric Learning with Multi-class N-pair Loss Objective
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MinkLoc3DMinkLoc3D: Point Cloud Based Large-Scale Place Recognition
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CatalystAccelerated deep learning R&D
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Batch Dropblock NetworkOfficial source code of "Batch DropBlock Network for Person Re-identification and Beyond" (ICCV 2019)
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LearningToCompare-TensorflowTensorflow implementation for paper: Learning to Compare: Relation Network for Few-Shot Learning.
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MHCLNDeep Metric and Hash Code Learning Network for Content Based Retrieval of Remote Sensing Images
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DeclutrThe corresponding code from our paper "DeCLUTR: Deep Contrastive Learning for Unsupervised Textual Representations". Do not hesitate to open an issue if you run into any trouble!
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RkdOfficial pytorch Implementation of Relational Knowledge Distillation, CVPR 2019
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GeDMLGeneralized Deep Metric Learning.
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AmsoftmaxA simple yet effective loss function for face verification.
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disent🧶 Modular VAE disentanglement framework for python built with PyTorch Lightning ▸ Including metrics and datasets ▸ With strongly supervised, weakly supervised and unsupervised methods ▸ Easily configured and run with Hydra config ▸ Inspired by disentanglement_lib
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S-WMDCode for Supervised Word Mover's Distance (SWMD)
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Hcn Prototypeloss PytorchHierarchical Co-occurrence Network with Prototype Loss for Few-shot Learning (PyTorch)
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CVPR2020 PADS(CVPR 2020) This repo contains code for "PADS: Policy-Adapted Sampling for Visual Similarity Learning", which proposes learnable triplet mining with Reinforcement Learning.
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MetricLearning-mnist-pytorchPlayground of Metric Learning with MNIST @pytorch. We provide ArcFace, CosFace, SphereFace, CircleLoss and visualization.
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GPQGeneralized Product Quantization Network For Semi-supervised Image Retrieval - CVPR 2020
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simple-cnapsSource codes for "Improved Few-Shot Visual Classification" (CVPR 2020), "Enhancing Few-Shot Image Classification with Unlabelled Examples" (WACV 2022), and "Beyond Simple Meta-Learning: Multi-Purpose Models for Multi-Domain, Active and Continual Few-Shot Learning" (Neural Networks 2022 - in submission)
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MinkLocMultimodalMinkLoc++: Lidar and Monocular Image Fusion for Place Recognition
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Metric LearnMetric learning algorithms in Python
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SPL-ADVisEPyTorch code for BMVC 2018 paper: "Self-Paced Learning with Adaptive Visual Embeddings"
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ePillID-benchmarkePillID Dataset: A Low-Shot Fine-Grained Benchmark for Pill Identification (CVPR 2020 VL3)
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Voxceleb trainerIn defence of metric learning for speaker recognition
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SPMLUniversal Weakly Supervised Segmentation by Pixel-to-Segment Contrastive Learning
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Magnetloss PytorchPyTorch implementation of a deep metric learning technique called "Magnet Loss" from Facebook AI Research (FAIR) in ICLR 2016.
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Revisiting deep metric learning pytorch(ICML 2020) This repo contains code for our paper "Revisiting Training Strategies and Generalization Performance in Deep Metric Learning" (https://arxiv.org/abs/2002.08473) to facilitate consistent research in the field of Deep Metric Learning.
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scLearnscLearn:Learning for single cell assignment
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SegsortSegSort: Segmentation by Discriminative Sorting of Segments
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Pytorch Metric LearningThe easiest way to use deep metric learning in your application. Modular, flexible, and extensible. Written in PyTorch.
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Open ReidOpen source person re-identification library in python
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Open UcnThe first fully convolutional metric learning for geometric/semantic image correspondences.
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Additive Margin SoftmaxThis is the implementation of paper <Additive Margin Softmax for Face Verification>
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Powerful BenchmarkerA PyTorch library for benchmarking deep metric learning. It's powerful.
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lfdaLocal Fisher Discriminant Analysis in R
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