We cordially invite you to participate in our ECCV’2022 Seasons in Drift 
Challenge

Challenge description: The challenge will use an extension of the LTD Dataset 
(Nikolov, Ivan Adriyanov, et al. "Seasons in Drift: A Long-Term Thermal Imaging 
Dataset for Studying Concept Drift." NeurIPS, 2021) which consists of thermal 
footage that spans multiple seasons. For deployment and long-term use of 
machine-learning algorithms in a surveillance context it is vital that the 
algorithm is robust to the concept drift that occurs as the conditions in the 
outdoor environment changes. This challenge aims to spotlight the problem of 
concept drift in a surveillance context and highlight the challenges and 
limitations of existing methods. It will be divided into three competition 
tracks. Depending on the track chosen the training data will vary, however the 
validation and testing data will remain the same across all challenges.

  1.  Track 1 - Detection at day level: Train on a predefined and single day 
data and evaluate concept drift across time.

  2.  Track 2 - Detection at week level: Train on a predefined and single week 
data and evaluate concept drift across time.

  3.  Track 3 - Detection at month level: Train on a predefined and single 
month data and evaluate concept drift across time.


Challenge webpage: https://chalearnlap.cvc.uab.cat/challenge/51/description/


Tentative Schedule:


  *   Start of the Challenge (development phase): April 25, 2022

  *   Start of test phase: June 17, 2022

  *   End of the Challenge: June 24, 2022

  *   Release of final results: July 1st, 2022


Participants are invited to submit their contributions to the associated 
ECCV’22 Workshop (https://vap.aau.dk/rws-eccv2022/), independently of their 
rank position.


ORGANIZATION and CONTACT

Sergio Escalera 
<sergio.escalera.guerr...@gmail.com<mailto:sergio.escalera.guerr...@gmail.com>>,
 Computer Vision Center (CVC) and University of Barcelona, Spain

Kamal Nasrollahi <k...@create.aau.dk<mailto:k...@create.aau.dk>>, Milestone 
Systems and Aalborg University, Denmark

Thomas B. Moeslund, Aalborg University, Aalborg, Denmark

Julio C. S. Jacques Junior, Computer Vision Center (CVC), Spain

Anders Skaarup Johansen, Aalborg University, Denmark

Radu Ionescu, University of Bucharest, Romania

Fahad Shahbaz Khan, Mohamed bin Zayed University of Artificial Intelligence, 
Abu Dhabi, United Arab Emirates, and Linköping University, Sweden

Anthony Hoogs, Kitware, USA

Shmuel Peleg, Hebrew University, Israel

Mubarak Shah, University of Central Florida, USA

Computer Vision Center<http://www.cvc.uab.cat>
CONFIDENTIALITY WARNING<http://www.cvc.uab.es/?page_id=7475>

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