Single-Cycle Multidirectional EOG Classification Faster than Human Reaction Time for Wearable Human-Computer Interactions
Tasnia Nabiha, Orthy Toor, Wakim Sajjad Sakib, Abdullah Bin Shams

TL;DR
This study develops neural network models that classify ten EOG eye movement classes with around 99% accuracy and latency below human reaction time, enabling fast, efficient wearable HCI systems.
Contribution
The paper introduces cascaded neural network architectures optimized for single-cycle EOG signals, achieving high accuracy and low latency in multi-class eye movement classification.
Findings
Achieved ~99% accuracy across ten EOG classes.
Latency of 38.6 ms with 1D ANN, below human reaction time.
Cascaded CNN achieved 82.85 ms latency, balancing accuracy and speed.
Abstract
Electrooculogram (EOG) is a non-invasive bio-signal generated by the potential difference between the retina and cornea during eye movement, and is widely utilized in Human-Computer Interaction (HCI) systems. Expanding the range of detectable eye movements enhances system capability. However, increasing the number of classes typically degrades classification performance. While AI-based approaches can mitigate this limitation, their complexity increases significantly when operating on single-cycle EOG signals. Although single-cycle signals offer advantages such as low latency, reduced power consumption, and improved responsiveness, they are inherently limited by reduced informational content and higher susceptibility to noise. Ensuring low latency remains critical for real-time HCI applications, where system response must remain below human reaction thresholds. In this experimental…
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