12 research outputs found
SSBC 2020: Sclera Segmentation Benchmarking Competition in the Mobile Environment
The paper presents a summary of the 2020 Sclera
Segmentation Benchmarking Competition (SSBC), the 7th in
the series of group benchmarking efforts centred around the
problem of sclera segmentation. Different from previous
editions, the goal of SSBC 2020 was to evaluate the
performance of sclera-segmentation models on images
captured with mobile devices. The competition was used as a
platform to assess the sensitivity of existing models to i)
differences in mobile devices used for image capture and ii)
changes in the ambient acquisition conditions. 26 research
groups registered for SSBC 2020, out of which 13 took part
in the final round and submitted a total of 16 segmentation
models for scoring. These included a wide variety of
deep-learning solutions as well as one approach based on
standard image processing techniques. Experiments were
conducted with three recent datasets. Most of the
segmentation models achieved relatively consistent
performance across images captured with different mobile
devices (with slight differences across devices), but
struggled most with low-quality images captured in
challenging ambient conditions, i.e., in an indoor
environment and with poor lighting