X-MAS: Extremely Large-Scale Multi-Modal Sensor Dataset for Outdoor Surveillance in Real Environments

  • Dong Ki Noh
  • , Changki Sung
  • , Teayoung Uhm
  • , Woo Ju Lee
  • , Hyungtae Lim
  • , Jaeseok Choi
  • , Kyuewang Lee
  • , Dasol Hong
  • , Daeho Um
  • , Inseop Chung
  • , Hochul Shin
  • , Min Jung Kim
  • , Hyoung Rock Kim
  • , Seung Min Baek
  • , Hyun Myung

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

In robotics and computer vision communities, extensive studies have been widely conducted regarding surveillance tasks, including human detection, tracking, and motion recognition with a camera. Additionally, deep learning algorithms are widely utilized in the aforementioned tasks as in other computer vision tasks. Existing public datasets are insufficient to develop learning-based methods that handle various surveillance for outdoor and extreme situations such as harsh weather and low illuminance conditions. Therefore, we introduce a new large-scale outdoor surveillance dataset named eXtremely large-scale Multi-modAl Sensor dataset (X-MAS) containing more than 500,000 image pairs and the first-person view data annotated by well-trained annotators. Moreover, a single pair contains multi-modal data (e.g. an IR image, an RGB image, a thermal image, a depth image, and a LiDAR scan). This is the first large-scale first-person view outdoor multi-modal dataset focusing on surveillance tasks to the best of our knowledge. We present an overview of the proposed dataset with statistics and present methods of exploiting our dataset with deep learning-based algorithms.

Original languageEnglish
Pages (from-to)1093-1100
Number of pages8
JournalIEEE Robotics and Automation Letters
Volume8
Issue number2
DOIs
StatePublished - 1 Feb 2023

Keywords

  • Dataset
  • field robot
  • multi-modal perception
  • surveillance robot

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