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Privacy-enhancing Sclera Segmentation Benchmarking Competition: SSBC 2025

14 August 2025
Matej Vitek
Darian Tomašević
Abhijit Das
Sabari Nathan
Gökhan Özbulak
Gözde Ayşe Tataroğlu Özbulak
Jean-Paul Calbimonte
André Anjos
Hariohm Hemant Bhatt
Dhruv Dhirendra Premani
Jay Chaudhari
Caiyong Wang
Jian Jiang
Chi Zhang
Qi Zhang
I. I. Ganapathi
Syed Sadaf Ali
Divya Velayudan
Maregu Assefa
Naoufel Werghi
Zachary A. Daniels
Leeon John
Ritesh Vyas
J. Khiarak
Taher Ak-bari Saeed
Mahsa Nasehi
Ali Kianfar
Mobina Pashazadeh Panahi
Geetanjali Sharma
Pushp Raj Panth
Raghavendra Ramachandra
Aditya Nigam
Umapada Pal
Peter Peer
Vitomir Štruc
ArXiv (abs)PDFHTMLGithub (1★)
Main:10 Pages
12 Figures
Bibliography:3 Pages
5 Tables
Abstract

This paper presents a summary of the 2025 Sclera Segmentation Benchmarking Competition (SSBC), which focused on the development of privacy-preserving sclera-segmentation models trained using synthetically generated ocular images. The goal of the competition was to evaluate how well models trained on synthetic data perform in comparison to those trained on real-world datasets. The competition featured two tracks: (i)(i)(i) one relying solely on synthetic data for model development, and (ii)(ii)(ii) one combining/mixing synthetic with (a limited amount of) real-world data. A total of nine research groups submitted diverse segmentation models, employing a variety of architectural designs, including transformer-based solutions, lightweight models, and segmentation networks guided by generative frameworks. Experiments were conducted across three evaluation datasets containing both synthetic and real-world images, collected under diverse conditions. Results show that models trained entirely on synthetic data can achieve competitive performance, particularly when dedicated training strategies are employed, as evidenced by the top performing models that achieved F1F_1F1​ scores of over 0.80.80.8 in the synthetic data track. Moreover, performance gains in the mixed track were often driven more by methodological choices rather than by the inclusion of real data, highlighting the promise of synthetic data for privacy-aware biometric development. The code and data for the competition is available at:this https URL.

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