ISCA - International Speech
Communication Association


ISCApad Archive  »  2024  »  ISCApad #310  »  Events  »  Other Events  »  (2024-09-18) Special Session on 'Explainability in Multimedia Analysis' (ExMA)@ CBMI 2024, Reykjavik, Iceland

ISCApad #310

Tuesday, April 09, 2024 by Chris Wellekens

3-3-35 (2024-09-18) Special Session on 'Explainability in Multimedia Analysis' (ExMA)@ CBMI 2024, Reykjavik, Iceland
  

The 21st International Conference on Content-based Multimedia Indexing (CBMI 2024) will be held in Reykjavik, Iceland next September 18-20: https://cbmi2024.org/

The conference will bring together leading experts from academia and industry interested in the broad field of content-based multimedia indexing and applications.

The Special Session on 'Explainability in Multimedia Analysis' (ExMA), addresses the analysis of multimedia applications, such as person detection/tracking, face recognition or lifelog analysis, which may affect sensitive personal information. This raises both legal issues, e.g. concerning data protection and regulations in the ongoing European AI regulation, as well as ethical issues, related to potential bias in the system or misuse of these technologies. This special session focuses on AI-based explainability technologies in multimedia analysis.

The conference CBMI’2024 is supported by ACM SIGMM and the proceedings will be available at ACM Digital Library.

We would like to invite you to consider contributing a paper to this special session.

CBMI's important dates: https://cbmi2024.org/?page_id=211

Looking forward to see you at CBMI 2024.
With best regards,
Chiara Galdi

Special session organisers: Chiara Galdi, Martin Winter, Romain Giot, Romain Bourqui


Back  Top


 Organisation  Events   Membership   Help 
 > Board  > Interspeech  > Join - renew  > Sitemap
 > Legal documents  > Workshops  > Membership directory  > Contact
 > Logos      > FAQ
       > Privacy policy

© Copyright 2024 - ISCA International Speech Communication Association - All right reserved.

Powered by ISCA