The Deep Video Understanding Grand Challenge at ACM Multimedia 2022

Call For Participation


Challenge Website: https://sites.google.com/view/dvuchallenge2022

Deep video understanding is a difficult task which requires systems to develop a deep analysis and understanding of the relationships between different entities in video, to use known information to reason about other, more hidden information, and to populate a knowledge graph (KG) representation with all acquired information. To work on this task, a system should take into consideration all available modalities (speech, image/video, and in some cases text). 

The aim of this challenge series is to push the limits of multimodal extraction, fusion, and analysis techniques to address the problem of analyzing long duration videos holistically and extracting useful knowledge to utilize it in solving different types of queries. The target knowledge includes both visual and non-visual elements. As videos and multimedia data are getting more and more popular and usable by users in different domains and contexts, the research, approaches and techniques we aim to be applied in this Grand Challenge will be very relevant in the coming years and near future.

Challenge Overview:

Interested participants are invited to apply their approaches and methods on an extended novel Deep Video Understanding (DVU) dataset being made available by the challenge organizers. The dataset is split into a development data of 14 movies from the 2020-2021 versions of this challenge with Creative Commons licenses, and a new set of 10 movies licensed from KinoLorberEdu platform. 4 new movies out of the 10 will be added to the 14 movies, while 6 will be chosen as the testing data in 2022. The development data includes: original while videos, segmented scene shots, image examples of main characters and locations, movie-level KG representation of the relationships between main characters, relationships between characters key-locations, scene-level KG representation of each scene in a movie (location type, characters, interactions between them, order of interactions, sentiment of scene, and a short textual summary), and a global shared ontology of locations, relationships (family, social, work), interactions and sentiments. 

The organizers will support evaluation and scoring for a hybrid of main query types, at the overall movie level and at the individual scene level distributed with the dataset. Participants will be given the choice to submit results for either the movie-level or scene-level queries, or both. And for each category, queries are grouped for more flexible submission options :

More details are here on queries and dataset: https://sites.google.com/view/dvuchallenge2022/home/datasets-queries

Example Question types at Overall Movie Level:

Example Question types at Individual Scene Level:

A new addition to 2022 challenge is that systems will be asked to submit with their results for some queries a temporal segment from the movie or scene (e.g. using starting/ending timestamps) to act as an evidence for their answers. This requirement will be evaluated independently from the main scoring method and its objective is to demonstrate if systems can explain their results and if they are submitting their answers for the correct reasons.

Important Dates:
  • DVU development data release: Available from This URL

  • Testing dataset release : TBD (Coming Soon)

  • Testing queries release: TBD

  • Run submissions due to organizers: TBD

  • Paper submission deadline: TBD

  • Results released back to participants: TBD

  • Notification to authors: TBD

  • camera-ready submission: July 24th, 2022

  • ACM Multimedia dates: October 10 – 14, 2022

We hope you can join the challenge. For any questions please email the organizers directly:
Best Wishes
The DVU Grand Challenge Team
Both comments and pings are currently closed.

Comments are closed.

Design by 2b Consult