[Apologies for multiple postings]

ImageCLEF 2025
Multimedia Retrieval in CLEF
http://www.imageclef.org/2025/

*** CALL FOR PARTICIPATION ***

ImageCLEF 2025 is an evaluation campaign that is being organized as part of the 
CLEF (Conference and Labs of the Evaluation Forum) labs. The campaign offers 
several research tasks that welcome participation from teams around the world.

The results of the campaign appear in the working notes proceedings, published 
by CEUR Workshop Proceedings (CEUR-WS.org) and are presented in the CLEF 
conference. Selected contributions among the participants, will be invited for 
publication in the following year in the Springer Lecture Notes in Computer 
Science (LNCS) together with the annual lab overviews.

Target communities involve (but are not limited to): information retrieval 
(text, vision, audio, multimedia, social media, sensor data, etc.), machine 
learning, deep learning, data mining, natural language processing, image and 
video processing, computer vision, with special attention to the challenges of 
multi-modality, multi-linguality, and interactive search.


*** 2025 TASKS ***
ImageCLEFmedical Automatic Image Captioning
ImageCLEFmedical Synthetic Medical Images Created via GANs
ImageCLEFmedical Visual Question Answering
ImageCLEFmedical Multimodal And Generative TelemedICine (MAGIC)
Image Retrieval/Generation for Arguments
ImageCLEFtoPicto
ImageCLEF Multimodal Reasoning

#ImageCLEFmedical Automatic Image Captioning (9th edition)
https://www.imageclef.org/2025/medical/caption
Interpreting and summarizing the insights gained from medical images such as 
radiology output is a time-consuming task that involves highly trained experts 
and often represents a bottleneck in clinical diagnosis pipelines.The Automatic 
Image Captioning task is split into 2 subtasks: Concept Detection Task, based 
on identifying the presence and location of relevant concepts in a large corpus 
of medical images and the Caption Prediction Task, where participating systems 
are tasked with composing coherent captions for the entirety of an image

Organizers: Hendrik Damm, Johannes Rückert, Christoph M. Friedrich, Louise 
Bloch, Raphael Brüngel, Ahmad Idrissi-Yaghir, Benjamin Bracke (University of 
Applied Sciences and Arts Dortmund, Germany), Asma Ben Abacha (Microsoft, USA), 
Alba García Seco de Herrera (University of Essex, UK), Henning Müller 
(University of Applied Sciences Western Switzerland, Sierre, Switzerland), 
Henning Schäfer, Tabea M. G. Pakull (Institute for Transfusion Medicine, 
University Hospital Essen, Germany), Cynthia S. Schmidt, Obioma Pelka 
(Institute for Artificial Intelligence in Medicine, Germany)


#ImageCLEFmedical Synthetic Medical Images Created via GANs (3rd edition)
https://www.imageclef.org/2025/medical/gan
The task aims to further investigate the hypothesis that generative models 
generate synthetic medical images that retain "fingerprints" from the real 
images used during their training. These fingerprints raise important security 
and privacy concerns, particularly in the context of personal medical image 
data being used to create artificial images for various real-life applications. 
In the first subtask, participants will analyze synthetic biomedical images to 
determine whether specific real images were used in the training process of 
generative models. In the second subtask, participants will link each synthetic 
biomedical image to the specific subset of real data used during its 
generation. The goal is to identify the particular dataset of real images that 
contributed to the training of the generative model responsible for creating 
each synthetic image.

Organizers: Alexandra Andrei, Liviu-Daniel Ștefan, Mihai Gabriel Constantin, 
Mihai Dogariu, Bogdan Ionescu (National University of Science and Technology 
POLITEHNICA Bucharest, Romania), Ahmedkhan Radzhabov, Yuri Prokopchuk (National 
Academy of Science of Belarus, Minsk, Belarus), Vassili Kovalev (Belarusian 
Academy of Sciences, Minsk, Belarus), Henning Müller (University of Applied 
Sciences Western Switzerland, Sierre, Switzerland)


#ImageCLEFmedical Visual Question Answering (3rd edition)
https://www.imageclef.org/2025/medical/vqa
This year, the challenge looks at the integration of Visual Question Answering 
(VQA) with synthetic gastrointestinal (GI) data, aiming to enhance diagnostic 
accuracy and learning algorithms. The challenge includes developing algorithms 
that can interpret and answer questions based on synthetic GI images, creating 
advanced synthetic images that mimic accurate diagnostic visuals in detail and 
variability, and evaluating the effectiveness of VQA techniques with both 
synthetic and real GI data.
The 1st subtask asks participants to build algorithms that can accurately 
interpret and respond to questions pertaining to gastrointestinal (GI) images. 
This involves understanding the context and details within the images and 
providing precise answers that would assist in medical diagnostics, while the 
2nd subtask focuses on the generation of synthetic GI images that are highly 
detailed and variable enough to closely resemble real medical images.

Organizers: Steven A. Hicks, Sushant Gautam, Michael A. Riegler, Vajira 
Thambawita, Pål Halvorsen (SimulaMet, Norway)

#ImageCLEFmedical Multimodal And Generative TelemedICine (MEDIQA-MAGIC) (3rd 
edition)
https://www.imageclef.org/2025/medical/mediqa
The task extends on the previous year’s dataset and challenge based on 
multimodal dermatology response generation. Participants will be given a 
clinical narrative context along with accompanying images. The task is divided 
into two relevant sub-parts: (i) segmentation of dermatological problem 
regions, and (ii) providing answers to closed-ended questions (participants 
will be given a dermatological query, its accompanying images, as well as a 
closed-question with accompanying choices – the task is to select the correct 
answer to each question)

Organizers: Asma Ben Abacha, Wen-wai Yim, Noel Codella (Microsoft), Roberto 
Andres Novoa (Stanford University), Josep Malvehy (Hospital Clinic of Barcelona)

#Image Retrieval/Generation for Arguments  (4th edition)
https://www.imageclef.org/2025/argument-images
Given a set of arguments, the task is to return for each argument several 
images that help convey the argument. A suitable image could depict the 
argument or show a generalization or specialization. Participants can 
optionally add a short caption that explains the meaning of the image. Images 
can be either retrieved from the focused crawl or generated using an image 
generator.

Organizers: Maximilian Heinrich, Johannes Kiesel, Benno Stein 
(Bauhaus-Universität Weimar), Moritz Wolter (Leipzig University), Martin 
Potthast (University of Kassel, hessian.AI, scads.AI)

#ImageCLEFtoPicto (3rd edition)
https://www.imageclef.org/2025/topicto
The goal of ToPicto is to bring together linguists, computer scientists, and 
translators to develop new translation methods to translate either speech or 
text into a corresponding sequence of pictograms. The task refers to the 
relationship between text and related pictograms and is composed of 2 subtasks: 
the Text-to-Picto task, which focuses on the automatic generation of a 
corresponding sequence of pictogram terms and the Speech-to-Picto task, which 
focuses on directly translating speech to pictogram terms.

Organizers: Diandra Fabre, Cécile Macaire, Benjamin Lecouteux, Didier Schwab 
(Université Grenoble Alpes, LIG, France)

#ImageCLEF Multimodal Reasoning (new)
https://www.imageclef.org/2025/multimodalreasoning
MultimodalReason is a new task focusing on Multilingual Visual Question 
Answering (VQA). The formulation of the task is the following: Given an image 
of a question with 3-5 possible answers, participants must identify the single 
correct answer.The task is split into many subtasks, each handling a different 
language (English, Bulgarian, Arabic, Serbian, Italian, Hungarian, Croatian, 
Urdu, Kazakh, Spanish, with a few more on the way). The task's goal is to 
assess modern LLMs' reasoning capabilities on complex inputs, presented in 
different languages, across various subjects.

Organizers: Dimitar Dimitrov, Ivan Koychev (Sofia University "St. Kliment 
Ohridski", Bulgaria), Rocktim Jyoti Das, Zhuohan Xie, Preslav Nakov (Mohamed 
bin Zayed University of Artificial Intelligence (MBZUAI), Abu Dhabi, UAE)



*** IMPORTANT DATES ***
(may vary depending on the task)
- Run submission: May 10, 2025
- Working notes submission: May 30, 2025
- CLEF 2025 conference: September 9-12, 2025, Madrid, Spain


*** REGISTRATION ***
Follow the instructions here https://www.imageclef.org/2025


*** OVERALL COORDINATION ***
Bogdan Ionescu, Politehnica University of Bucharest, Romania
Henning Müller, HES-SO, Sierre, Switzerland
Cristian Stanciu, Politehnica University of Bucharest, Romania



On behalf of the organizers,

Cristian Stanciu
https://www.aimultimedialab.ro/
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