Back to Search Start Over

MCD: Diverse Large-Scale Multi-Campus Dataset for Robot Perception

Authors :
Nguyen, Thien-Minh
Yuan, Shenghai
Nguyen, Thien Hoang
Yin, Pengyu
Cao, Haozhi
Xie, Lihua
Wozniak, Maciej
Jensfelt, Patric
Thiel, Marko
Ziegenbein, Justin
Blunder, Noel
Publication Year :
2024

Abstract

Perception plays a crucial role in various robot applications. However, existing well-annotated datasets are biased towards autonomous driving scenarios, while unlabelled SLAM datasets are quickly over-fitted, and often lack environment and domain variations. To expand the frontier of these fields, we introduce a comprehensive dataset named MCD (Multi-Campus Dataset), featuring a wide range of sensing modalities, high-accuracy ground truth, and diverse challenging environments across three Eurasian university campuses. MCD comprises both CCS (Classical Cylindrical Spinning) and NRE (Non-Repetitive Epicyclic) lidars, high-quality IMUs (Inertial Measurement Units), cameras, and UWB (Ultra-WideBand) sensors. Furthermore, in a pioneering effort, we introduce semantic annotations of 29 classes over 59k sparse NRE lidar scans across three domains, thus providing a novel challenge to existing semantic segmentation research upon this largely unexplored lidar modality. Finally, we propose, for the first time to the best of our knowledge, continuous-time ground truth based on optimization-based registration of lidar-inertial data on large survey-grade prior maps, which are also publicly released, each several times the size of existing ones. We conduct a rigorous evaluation of numerous state-of-the-art algorithms on MCD, report their performance, and highlight the challenges awaiting solutions from the research community.<br />Comment: Accepted by The IEEE/CVF Conference on Computer Vision and Pattern Recognition 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.11496
Document Type :
Working Paper