Published October 6, 2022
| Version v0.1
Dataset
Open
Datasets for a data-centric image classification benchmark for noisy and ambiguous label estimation
Description
This is the official data repository of the Data-Centric Image Classification (DCIC) Benchmark. The goal of this benchmark is to measure the impact of tuning the dataset instead of the model for a variety of image classification datasets. Paper: https://arxiv.org/abs/2207.06214 Source Code: https://github.com/Emprime/dcic ## Citation Please cite as
@article{schmarje2022benchmark,
author = {Schmarje, Lars and Grossmann, Vasco and Zelenka, Claudius and Dippel, Sabine and Kiko, Rainer and Oszust, Mariusz and Pastell, Matti and Stracke, Jenny and Valros, Anna and Volkmann, Nina and Koch, Reinahrd},
journal = {36th Conference on Neural Information Processing Systems (NeurIPS 2022) Track on Datasets and Benchmarks},
title = {{Is one annotation enough? A data-centric image classification benchmark for noisy and ambiguous label estimation}},
year = {2022}
}
Please see the full details about the used datasets below, which should also be cited as part of the license.
Files
MiceBone.zip
Files
(680.5 MB)
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