CVHCApr 2

Night Eyes: A Reproducible Framework for Constellation-Based Corneal Reflection Matching

arXiv:2604.0190931.8h-index: 44
Predicted impact top 81% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This addresses reproducibility issues in eye tracking for researchers and practitioners, though it is incremental as it adapts existing constellation matching methods to a specific domain.

The paper tackled the problem of unreliable corneal reflection detection in eye tracking by introducing a constellation-based pipeline for multi-glint detection and matching, resulting in stable identity-preserving correspondence under noisy conditions as evaluated on a public dataset.

Corneal reflection (glint) detection plays an important role in pupil-corneal reflection (P-CR) eye tracking, but in practice it is often handled as heuristics embedded within larger systems, making reproducibility difficult across hardware setups. We introduce a 2D geometry-driven, constellation-based pipeline for mulit-glint detection and matching, focusing on reproducibility and clear evaluation. Inspired by lost-in-space star identification, we treat glints as structured constellations rather than independent blobs. We propose a Similarity-Layout Alignment (SLA) procedure which adapts constellation matching to the specific constraints of multi-LED eye tracking. The framework brings together controlled over-detection, adaptive candidate fallback, appearance-aware scoring, and optional semantic layout priors while keeping detection and correspondence explicitly separated. Evaluated on a public multi-LED dataset, the system provides stable identity-preserving correspondence under noisy conditions. We release code, presets, and evaluation scripts to enable transparent replication, comparison, and dataset annotation.

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