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Abstract

In thermal video security monitoring the reliability of deployed systems rely on having varied training data that can effectively generalize and have consistent performance in the deployed context. However, for security monitoring of an outdoor environment the amount of variation introduced to the imaging system would require extensive annotated data to fully cover for training and evaluation. To this end we designed and ran a challenge to stimulate research towards alleviating the impact of concept drift on object detection performance. We used an extension of the Long-Term Thermal Imaging Dataset, composed of thermal data acquired from 14th May 2020 to 30th of April 2021, with a total of 1689 2-min clips with bounding-box annotations for 4 different categories. The data covers a wide range of different weather conditions and object densities with the goal of measuring the thermal drift over time, from the coldest day/week/month of the dataset. The challenge attracted 184 registered participants, which was considered a success from the perspective of the organizers. While participants managed to achieve higher mAP when compared to a baseline, concept drift remains a strongly impactful factor. This work describes the challenge design, the adopted dataset and obtained results, as well as discuss top-winning solutions and future directions on the topic.

Original languageEnglish
Title of host publicationComputer Vision - ECCV 2022 Workshops, Proceedings
EditorsLeonid Karlinsky, Tomer Michaeli, Ko Nishino
Number of pages15
Volume13805
PublisherSpringer
Publication date18 Jan 2023
Pages755-769
ISBN (Print)978-3-031-25071-2
ISBN (Electronic)978-3-031-25072-9
DOIs
Publication statusPublished - 18 Jan 2023
EventEuropean Conference on Computer Vision : Workshop on Real-World Surveillance - Tel Aviv, Israel
Duration: 23 Oct 202227 Oct 2022
https://vap.aau.dk/rws-eccv2022/

Workshop

WorkshopEuropean Conference on Computer Vision
Country/TerritoryIsrael
CityTel Aviv
Period23/10/202227/10/2022
Internet address
SeriesLecture Notes in Computer Science
Volume13805
ISSN0302-9743

Bibliographical note

Funding Information:
Acknowledgements. This work has been partially supported by Milestone Research Program at AAU, the Spanish project PID2019-105093GB-I00 and by ICREA under the ICREA Academia programme.

Publisher Copyright:
© 2023, The Author(s), under exclusive license to Springer Nature Switzerland AG.

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