Following the success of the four first éditions, we propose the 5th edition of the ICPR workshop on Reproducible Research in Pattern Recognition.
RRPR 2024 is intended as both a short participative course on the Reproducible Research (RR) aspects, leading to open discussions with the participants, and also as a practical workshop on how to actually perform RR. In addition, another key goal for gathering the research community is to further advance the scientific aspects of reproducibility in pattern recognition research.
This workshop is of interest for all ICPR participants and attendees since it allows to handle various topics not restricted to one specific fields. The reproducibility is an important topics in general and particularly good for PhD students and young researchers to learn "good habits".
The workshop should follow a hybrid mode allowing both on-site and online presentations. If this is compatible with ICPR 2024's constraints, we are looking into the possibility of holding a double event at another partner site, enabling greater remote interaction.
Note: because RRPR 2024 will publish its own separate post-proceedings (springer LNCS, confirmation actually pending), distinct from the ICPR 2024 proceedings, publishing a paper in RRPR 2024 will not consume one of your allowed ICPR 2024 author registration tickets. No extra publication fee will be necessary.
The Fifth edition of the RRPR workshop proposal is accepted as ICPR satellite workshop and was endorsed by IAPR ! 🎉 Stay tuned for more! May 27, 2024
Call For Papers
This Call for Papers expects two kinds of contributions. (pdf version of the call for paper available here)
The track 1 on RR Frameworks is dedicated to the general topics of Reproducible Research in experimental Computer Science with clear links to Image Processing and Pattern Recognition. Papers describing experiences, frameworks or platforms are welcome. The contributions might also include discussions on software libraries, experiences highlighting how the works benefit from Reproducible Research.
In the track 2 on RR Results, authors are invited to describe their works in terms of Reproducible Research. For example, authors of papers already accepted to ICPR might propose a companion paper describing the quality of the reproducible aspects. In particular the papers of this track can focus mainly (but not limited) for instance on:
Algorithmic implementation details
Influence of parameter(s) for the result quality (criteria to optimize them).
Integration of source code in an other framework.
Known limitations (or difficult cases).
Future improvements.
Installation procedure.
For this track, the topics could overlap with the main topics of the ICPR tracks:
Geometry and Deep Learning
Discrete Geometry and Mathematical Morphology
Pattern Recognition and Machine Learning
Computer Vision and Robot Vision
Image, Speech, Signal, and Video Processing
Document Analysis, Biometrics, and Pattern Recognition Applications.