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Dataset of binocularly coded steady-state visual evoked potentials recorded with an augmented reality headset

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Figshare2025-07-04 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Multi-frequency_steady-state_visual_evoked_potential_dataset_in_the_augmented_reality_environment_using_a_portable_stimulation_device_epoch_data_/26764735/8
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Steady-state visually evoked potential (SSVEP)-based brain-computer interfaces (BCIs) have shown significant promise for practical applications. The integration of SSVEP-BCIs with head-mounted augmented-reality (AR) displays is expected to foster wearable, portable systems; nevertheless, empirical resources for such configurations are scarce, especially for paradigms employing innovative stimulation paradigms. Here we present a curated SSVEP dataset recorded with a binocular AR headset that independently modulates the visual input to each eye and a lightweight electroencephalography recorder. Beyond the conventional binocular-congruent single-frequency stimulation adopted in AR-SSVEP studies, the dataset systematically explores binocular-incongruent dual-frequency encoding whereby the two lenses render flickers with distinct frequencies and/or phases. We report comparative analyses of SSVEP characteristics and BCI performance under congruent versus incongruent protocols, and delineate the influence of inter-ocular frequency and phase disparities. The results substantiate the feasibility of wearable AR-SSVEP-BCIs and highlight binocular-incongruent dual-frequency stimulation as a compelling strategy for improving target separability. The dataset should accelerate research on portable SSVEP-BCIs, novel encoding schemes, and the neural mechanisms of binocular vision.If you use this dataset for a publication, please cite our corresponding research paper: "Dataset of binocularly coded steady-state visual evoked potentials recorded with an augmented reality headset".
提供机构:
Ming, Dong; Han, Yuheng; Liu, Peishuai; Ke, Yufeng
创建时间:
2025-07-04
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