The Oxford multimotion dataset: multiple SE(3) motions with ground truth
Datasets advance research by posing challenging new problems and providing standardized methods of algorithm comparison. High-quality datasets exist for many important problems in robotics and computer vision, including egomotion estimation and motion/scene segmentation, but not for techniques that...
Main Authors: | , |
---|---|
Format: | Journal article |
Published: |
Institute of Electrical and Electronics Engineers
2019
|
_version_ | 1797100734021369856 |
---|---|
author | Judd, K Gammell, J |
author_facet | Judd, K Gammell, J |
author_sort | Judd, K |
collection | OXFORD |
description | Datasets advance research by posing challenging new problems and providing standardized methods of algorithm comparison. High-quality datasets exist for many important problems in robotics and computer vision, including egomotion estimation and motion/scene segmentation, but not for techniques that estimate every motion in a scene. Metric evaluation of these multimotion estimation techniques requires datasets consisting of multiple, complex motions that also contain ground truth for every moving body. The Oxford Multimotion Dataset provides a number of multimotion estimation problems of varying complexity. It includes both complex problems that challenge existing algorithms as well as a number of simpler problems to support development. These include observations from both static and dynamic sensors, a varying number of moving bodies, and a variety of different 3D motions. It also provides a number of experiments designed to isolate specific challenges of the multimotion problem, including rotation about the optical axis and occlusion. In total, the Oxford Multimotion Dataset contains over 110 minutes of multimotion data consisting of stereo and RGB-D camera images, IMU data, and Vicon ground-truth trajectories. The dataset culminates in a complex toy car segment representative of many challenging real-world scenarios. This paper describes each experiment with a focus on its relevance to the multimotion estimation problem. |
first_indexed | 2024-03-07T05:41:50Z |
format | Journal article |
id | oxford-uuid:e5d98f14-5a43-4af6-b704-ee2d1a532164 |
institution | University of Oxford |
last_indexed | 2024-03-07T05:41:50Z |
publishDate | 2019 |
publisher | Institute of Electrical and Electronics Engineers |
record_format | dspace |
spelling | oxford-uuid:e5d98f14-5a43-4af6-b704-ee2d1a5321642022-03-27T10:26:48ZThe Oxford multimotion dataset: multiple SE(3) motions with ground truthJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:e5d98f14-5a43-4af6-b704-ee2d1a532164Symplectic Elements at OxfordInstitute of Electrical and Electronics Engineers2019Judd, KGammell, JDatasets advance research by posing challenging new problems and providing standardized methods of algorithm comparison. High-quality datasets exist for many important problems in robotics and computer vision, including egomotion estimation and motion/scene segmentation, but not for techniques that estimate every motion in a scene. Metric evaluation of these multimotion estimation techniques requires datasets consisting of multiple, complex motions that also contain ground truth for every moving body. The Oxford Multimotion Dataset provides a number of multimotion estimation problems of varying complexity. It includes both complex problems that challenge existing algorithms as well as a number of simpler problems to support development. These include observations from both static and dynamic sensors, a varying number of moving bodies, and a variety of different 3D motions. It also provides a number of experiments designed to isolate specific challenges of the multimotion problem, including rotation about the optical axis and occlusion. In total, the Oxford Multimotion Dataset contains over 110 minutes of multimotion data consisting of stereo and RGB-D camera images, IMU data, and Vicon ground-truth trajectories. The dataset culminates in a complex toy car segment representative of many challenging real-world scenarios. This paper describes each experiment with a focus on its relevance to the multimotion estimation problem. |
spellingShingle | Judd, K Gammell, J The Oxford multimotion dataset: multiple SE(3) motions with ground truth |
title | The Oxford multimotion dataset: multiple SE(3) motions with ground truth |
title_full | The Oxford multimotion dataset: multiple SE(3) motions with ground truth |
title_fullStr | The Oxford multimotion dataset: multiple SE(3) motions with ground truth |
title_full_unstemmed | The Oxford multimotion dataset: multiple SE(3) motions with ground truth |
title_short | The Oxford multimotion dataset: multiple SE(3) motions with ground truth |
title_sort | oxford multimotion dataset multiple se 3 motions with ground truth |
work_keys_str_mv | AT juddk theoxfordmultimotiondatasetmultiplese3motionswithgroundtruth AT gammellj theoxfordmultimotiondatasetmultiplese3motionswithgroundtruth AT juddk oxfordmultimotiondatasetmultiplese3motionswithgroundtruth AT gammellj oxfordmultimotiondatasetmultiplese3motionswithgroundtruth |