IMPACT SCORE JOURNAL RANKING CONFERENCE RANKING Conferences Journals Workshops Seminars SYMPOSIUMS MEETINGS BLOG LaTeX 5G Tutorial Free Tools
Learning from Scarce Data 2022 : CBMI Special Session: Learning from scarce data challenges in the media domain
Learning from Scarce Data 2022 : CBMI Special Session: Learning from scarce data challenges in the media domain

Learning from Scarce Data 2022 : CBMI Special Session: Learning from scarce data challenges in the media domain

Graz, Austria
Event Date: September 14, 2022 - September 16, 2022
Submission Deadline: April 10, 2020




Call for Papers

CALL FOR PAPERS:
Special session on "Learning from scarce data challenges in the media domain"
(in conjunction with CBMI 2022, September 14-16, Graz, Austria)

Website: https://cbmi2022.org/call-for-special-session-papers/
Contact: Hannes Fassold, JOANNEUM RESEARCH, [email protected]
Paper deadline: April 10, 2022

Deep learning-based algorithms for multimedia content analysis need a large amount of annotated data for effective training, e.g., for image classification on the ImageNet dataset, each class comprises several thousand annotated samples. Having a dataset of insufficient size for training usually leads to a model which is prone to overfitting and performs poorly in practice. But in many real-world applications in multimedia content analysis, it is not possible or not viable to gather and annotate such a large training data. This may be due to the prohibitive cost of human annotation, ownership/copyright issues of the data, or simply not having enough media content of a certain kind available.

To address this issue, a lot of research has been performed in recent years on learning from scarce data/learning from limited data. There are a variety of ways to work around the problem of data scarcity like using transfer learning, domain transfer or few-shot learning.

The special session on “Learning from scarce data” aims to provide a forum for novel approaches on learning from scarce data for multimedia content analysis, with a focus on the media domain.

The topics of interest include, but are not limited to:

-Transfer learning
-Synthetic data generation
-Domain transfer/adaptation
-Semi-supervised and self-supervised learning, e.g. to take advantage of large amounts of unlabeled media archive content
-Few-shot learning (classification, object detection etc.), which is useful e.g. for adding new object classes to an automatic tagging engine for media archive content.
-Benchmarking and evaluation frameworks for content from the media domain
-Open resources, e.g., software tools for learning from scarce data in the media domain



Session Organisers:
-Dr. Giuseppe Amato, CNR-ISTI, Pisa
-Prof. Bogdan Ionescu, AI Multimedia Lab, Politehnica University of Bucharest, Romania
-Hannes Fassold, JOANNEUM RESEARCH, Graz


Credits and Sources

[1] Learning from Scarce Data 2022 : CBMI Special Session: Learning from scarce data challenges in the media domain


Check other Conferences, Workshops, Seminars, and Events


OTHER ARTIFICIAL INTELLIGENCE EVENTS

ICCMA--EI 2024: 2024 The 12th International Conference on Control, Mechatronics and Automation (ICCMA 2024)
Brunel University London, UK
Nov 11, 2024
NLPAI 2024: 2024 5th International Conference on Natural Language Processing and Artificial Intelligence (NLPAI 2024)
Chongqing, China
Jul 12, 2024
ICAITE 2024: 2024 the International Conference on Artificial Intelligence and Teacher Education (ICAITE 2024)
Beijing, China
Oct 12, 2024
Informed ML for Complex Data@ESANN 2024: Informed Machine Learning for Complex Data special session at ESANN 2024
Bruges, Belgium
Oct 9, 2024
Effective Grant Writing Using AI 2024: Invitation to Faculty Development Program Effective Grant Writing Strategies Using AI
Online
Mar 12, 2024
SHOW ALL