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This repo contains code for training expert trajectories and distilling synthetic data from our Dataset Distillation by Matching Training Trajectories paper (CVPR 2022). Please see our project page for more results.
This repository contains code for training expert trajectories and distilling synthetic data for the paper: Dataset Distillation by Automatic Training Trajectories. The listed is the steps to run the code. 1. Set up enveriments. 2. Create an wandb account for monitoring distillation process…
In this work, we propose to emphasize discriminative features for dataset distillation in the complex scenario, i.e. images in complex scenarios are characterized by significant variations in object sizes and the presence of a large amount of class-irrelevant information.
Matching-based Dataset Distillation methods can be summarized into two steps:
This repository is the official implementation of Dataset Condensation with Contrastive Signals (DCC), published as a conference paper at ICML 2022. The implementation is based on (https://github.com/VICO-UoE/DatasetCondensation).
Official PyTorch implementation of "Loss-Curvature Matching for Dataset Selection and Condensation" (AISTATS 2023) by Seungjae Shin, HeeSun Bae, Donghyeok Shin, Weonyoung Joo, and Il-Chul Moon.
PyTorch implementation of paper "Neural Spectral Decomposition for Dataset Distillation" in ECCV 2024.
Dataset condensation aims to condense a large training set T into a small synthetic set S such that the model trained on the small synthetic set can obtain comparable testing performance to that trained on the large training set.
Wenliang Zhong 1 , Haoyu Tang 1 , Qinghai Zheng 2 , Mingzhu Xu 1 , Yupeng Hu 1 , Weili Guan 3