Datasets:
very_lossy_0 imagewidth (px) 1.28k 1.28k | very_lossy_1 imagewidth (px) 1.28k 1.28k | very_lossy_2 imagewidth (px) 1.28k 1.28k | very_lossy_3 imagewidth (px) 1.28k 1.28k | very_lossy_4 imagewidth (px) 1.28k 1.28k | very_lossy_5 imagewidth (px) 1.28k 1.28k | very_lossy_6 imagewidth (px) 1.28k 1.28k | very_lossy_7 imagewidth (px) 1.28k 1.28k | very_lossy_8 imagewidth (px) 1.28k 1.28k | very_lossy_9 imagewidth (px) 1.28k 1.28k | very_lossy_10 imagewidth (px) 1.28k 1.28k | very_lossy_11 imagewidth (px) 1.28k 1.28k | very_lossy_12 imagewidth (px) 1.28k 1.28k | very_lossy_13 imagewidth (px) 1.28k 1.28k | very_lossy_14 imagewidth (px) 1.28k 1.28k | near_lossless_0 imagewidth (px) 1.28k 1.28k | near_lossless_1 imagewidth (px) 1.28k 1.28k | near_lossless_2 imagewidth (px) 1.28k 1.28k | near_lossless_3 imagewidth (px) 1.28k 1.28k | near_lossless_4 imagewidth (px) 1.28k 1.28k | near_lossless_5 imagewidth (px) 1.28k 1.28k | near_lossless_6 imagewidth (px) 1.28k 1.28k | near_lossless_7 imagewidth (px) 1.28k 1.28k | near_lossless_8 imagewidth (px) 1.28k 1.28k | near_lossless_9 imagewidth (px) 1.28k 1.28k | near_lossless_10 imagewidth (px) 1.28k 1.28k | near_lossless_11 imagewidth (px) 1.28k 1.28k | near_lossless_12 imagewidth (px) 1.28k 1.28k | near_lossless_13 imagewidth (px) 1.28k 1.28k | near_lossless_14 imagewidth (px) 1.28k 1.28k | label_0 imagewidth (px) 1.28k 1.28k | label_1 imagewidth (px) 1.28k 1.28k | label_2 imagewidth (px) 1.28k 1.28k | label_3 imagewidth (px) 1.28k 1.28k | label_4 imagewidth (px) 1.28k 1.28k | label_5 imagewidth (px) 1.28k 1.28k | label_6 imagewidth (px) 1.28k 1.28k | label_7 imagewidth (px) 1.28k 1.28k | label_8 imagewidth (px) 1.28k 1.28k | label_9 imagewidth (px) 1.28k 1.28k | label_10 imagewidth (px) 1.28k 1.28k | label_11 imagewidth (px) 1.28k 1.28k | label_12 imagewidth (px) 1.28k 1.28k | label_13 imagewidth (px) 1.28k 1.28k | label_14 imagewidth (px) 1.28k 1.28k |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
BDD100K Train
This dataset was created for DeDelayed: Deleting Remote Inference Delay via On-Device Correction (CVPR 2026). Code is available at InterDigitalInc/dedelayed.
The underlying data is derived from the BDD100K driving video dataset. It contains 69,800 training sequences of 15 frames each.
Usage
This dataset is the training split. Use it together with danjacobellis/bdd500_pl_f14 as follows:
import datasets
dataset = datasets.DatasetDict({
'train': datasets.load_dataset("danjacobellis/bdd100k_train", split='train'),
'validation': datasets.load_dataset("danjacobellis/bdd500_pl_f14", split='validation')
})
For an example training collate_fn, see the reference training notebook.
License
This dataset is distributed under the BDD100K license:
Copyright ©2018. The Regents of the University of California (Regents). All Rights Reserved.
THIS SOFTWARE AND/OR DATA WAS DEPOSITED IN THE BAIR OPEN RESEARCH COMMONS REPOSITORY ON 1/1/2021
Permission to use, copy, modify, and distribute this software and its documentation for educational, research, and not-for-profit purposes, without fee and without a signed licensing agreement; and permission to use, copy, modify and distribute this software for commercial purposes (such rights not subject to transfer) to BDD and BAIR Commons members and their affiliates, is hereby granted, provided that the above copyright notice, this paragraph and the following two paragraphs appear in all copies, modifications, and distributions. Contact The Office of Technology Licensing, UC Berkeley, 2150 Shattuck Avenue, Suite 510, Berkeley, CA 94720-1620, (510) 643-7201, otl@berkeley.edu, http://ipira.berkeley.edu/industry-info for commercial licensing opportunities.
IN NO EVENT SHALL REGENTS BE LIABLE TO ANY PARTY FOR DIRECT, INDIRECT, SPECIAL, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, INCLUDING LOST PROFITS, ARISING OUT OF THE USE OF THIS SOFTWARE AND ITS DOCUMENTATION, EVEN IF REGENTS HAS BEEN ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
REGENTS SPECIFICALLY DISCLAIMS ANY WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE. THE SOFTWARE AND ACCOMPANYING DOCUMENTATION, IF ANY, PROVIDED HEREUNDER IS PROVIDED "AS IS". REGENTS HAS NO OBLIGATION TO PROVIDE MAINTENANCE, SUPPORT, UPDATES, ENHANCEMENTS, OR MODIFICATIONS.
Citation
@inproceedings{jacobellis2026dedelayed,
title = {Dedelayed: Deleting Remote Inference Delay via On-Device Correction},
author = {Jacobellis, Dan and Ulhaq, Mateen and Racap{\\'e}, Fabien and Choi, Hyomin and Yadwadkar, Neeraja J.},
booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
year = {2026},
note = {To appear}
}
@InProceedings{bdd100k,
author = {Yu, Fisher and Chen, Haofeng and Wang, Xin and Xian, Wenqi and Chen, Yingying and Liu, Fangchen and Madhavan, Vashisht and Darrell, Trevor},
title = {BDD100K: A Diverse Driving Dataset for Heterogeneous Multitask Learning},
booktitle = {The IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2020}
}
@inproceedings{xu2017end,
title={End-to-end learning of driving models from large-scale video datasets},
author={Xu, Huazhe and Gao, Yang and Yu, Fisher and Darrell, Trevor},
booktitle={The IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2017}
}
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