CVPR Dates: June 19-25, 2021 / Workshop Date: TBD
PAPER SUBMISSION IS NOW OPEN!
PAPER and ABSTRACT SUBMISSION DEADLINE: March 31, 2021
ACCEPTANCE NOTIFICATION: April 14, 2021
CAMERA READY: April 18, 2021
WORKSHOP REGISTRATION: In conjunction with CVPR’21
OVERVIEW:
In the last years, we have seen tremendous progress in the capabilities of computer systems to classify video clips taken from the Internet or to analyze human actions in videos. There are lots of works in video recognition field focusing on specific video understanding tasks, such as action recognition, scene understanding, etc. There have been great achievements in such tasks, however, there has not been enough attention toward the holistic video understanding task as a problem to be tackled. Current systems are expert in some specific fields of the general video understanding problem. However, for real-world applications, such as, analyzing multiple concepts of a video for video search engines and media monitoring systems or providing an appropriate definition of the surrounding environment of a humanoid robot, a combination of current state-of-the-art methods should be used. Therefore, in this workshop, we intend to introduce holistic video understanding as a new challenge for the video understanding efforts. This challenge focuses on the recognition of scenes, objects, actions, attributes, and events in the real-world user-generated videos. To be able to address such tasks, we also introduce our new dataset named Holistic Video Understanding (HVU dataset) that is organized hierarchically in a semantic taxonomy of holistic video understanding. Almost all of the real-world conditioned video datasets are targeting human action or sport recognition. So, our new dataset can help the vision community and bring more attention to bring more interesting solutions for holistic video understanding. The workshop is tailored to bringing together ideas around multi-label and multi-task recognition of different semantic concepts in the real-world videos. And the research efforts can be tried on our new dataset. HVU Dataset: https://github.com/holistic-video-understanding
Topics:
-
Large scale video understanding
-
Multi-Modal learning from videos
-
Multi-concept recognition from videos
-
Multi-task deep neural networks for videos
-
Learning holistic representation from videos
-
Weakly supervised learning from web videos
-
Object, scene and event recognition from videos
-
Unsupervised video visual representation learning
-
Unsupervised and self-supervised learning with videos
INVITED SPEAKERS:
-
Cordelia Schmid, Google AI
-
Joao Carreira, Google DeepMind
-
Carl Vondrick, Columbia University
-
Dima Damen, University of Bristol
-
Sanja Fidler, University of Toronto
-
Kristen Grauman, University of Texas at Austin
Organizers:
Mohsen Fayyaz, University of Bonn
Ali Diba, KU Leuven
Vivek Sharma, Harvard, MIT
Juergen Gall, University of Bonn
Ehsan Adeli, Stanford University
Rainer Stiefelhagen, KIT
Luc Van Gool, ETH Zurich & KU Leuven
David Ross, Google AI
Manohar Paluri, Facebook AI
best, Vivek