Advancing AI Video Analysis for Figure Skating

FSRI unites researchers, coaches, and skaters to build open, reliable tools for understanding jumps, spins, edges, and program components.

What We Focus On

We review state-of-the-art figure skating models and datasets, advocating for transparent, unbiased evaluations the community can trust.

Our small team prioritizes published work with the greatest impact on athlete safety and fair scoring. We do not advance every subfield ourselves, but we gather evidence across leading releases so advocates can see where the science stands today.

Stylized convolutional neural network layers flowing into a quality check.

Element detection & parsing

We audit headline detectors and parsers—often powered by convolutional and transformer backbones—to understand how reliably they surface jumps, spins, and choreo sequences that officials and advocates review.

Generated visualization of a skater mid-jump with trajectory overlays.

Jump mechanics & spin analysis

We compare claims about take-off edges, air time, and centering against pose-derived evidence, publishing notes that clarify where the literature agrees, disagrees, or still lacks unbiased evaluation.

Mock analytics dashboard summarizing athlete feedback for coaches.

Coach tools & open benchmarks

We translate lab findings into practical dashboards, briefs, and open protocols so coaches, skaters, and policymakers can pressure-test systems without needing proprietary infrastructure.

Datasets We Track

Working with open and request-only corpora to benchmark figure skating systems.

Get Involved

We welcome collaborators across research, coaching, and the skating community. Share datasets, validate models, or help define responsible evaluation benchmarks.

Email board@figureskate.ai or say hello on @FigureSkateAI.