EveLoad:基于事件驱动眼动的认知负荷识别 / EveLoad: Cognitive Workload Recognition from Event-Based Eye Movements
1️⃣ 一句话总结
本文提出了首个基于事件相机的眼动数据集EveLoad,通过让受试者在固定注视点的任务中完成不同难度的认知测试,并结合一种时空编码学习框架,实现了对六个等级认知负荷的精准识别(准确率超96%),为康复训练等场景提供了一种高时间分辨率、低延迟的无干扰监测新方法。
Cognitive workload monitoring is important for adaptive rehabilitation and assistive interfaces, where task difficulty, pacing, and feedback should be adjusted according to the user's cognitive state to avoid overload and under-challenge. Emerging extended reality and robot-assisted rehabilitation environments provide controllable training tasks, but they require unobtrusive sensing methods that can capture rapid ocular dynamics during interaction. Existing eye-movement-based cognitive workload recognition methods mainly rely on frame-based eye trackers, which often suffer from limited temporal resolution and degraded robustness under rapid eye movements. In contrast, event cameras provide microsecond-level temporal resolution, high dynamic range and low latency, making them suitable for capturing fine-grained ocular dynamics. Many previous studies rely on free-viewing or similar paradigms, where gaze locations can vary across tasks. As a result, models may learn associations between gaze-location distributions and cognitive workload, rather than workload-related eye movement characteristics themselves. In this work, we introduce EveLoad, which, to the best of our knowledge, is the first event-based eye-movement dataset with graded cognitive workload annotations, collected from 20 healthy participants under spatially constrained and task-driven conditions using a controlled N-back-guided fixation paradigm. Based on this dataset, we establish a benchmark for cognitive workload recognition with six workload levels and propose a learning framework that encodes spatiotemporal event representations. Experimental results show that our approach achieves an average subject-specific accuracy of 96.36% and 96.13% under mixed random split evaluation. These results suggest that event-based eye movements may provide a useful sensing pathway for future workload-aware rehabilitation.
EveLoad:基于事件驱动眼动的认知负荷识别 / EveLoad: Cognitive Workload Recognition from Event-Based Eye Movements
本文提出了首个基于事件相机的眼动数据集EveLoad,通过让受试者在固定注视点的任务中完成不同难度的认知测试,并结合一种时空编码学习框架,实现了对六个等级认知负荷的精准识别(准确率超96%),为康复训练等场景提供了一种高时间分辨率、低延迟的无干扰监测新方法。
源自 arXiv: 2606.25177